COGNITIVE DISSONANCE THEORY AND ALCOHOL AWARENESS
Post on 12-Feb-2022
3 Views
Preview:
Transcript
COGNITIVE DISSONANCE THEORY AND ALCOHOL AWARENESS MESSAGES:
COLLEGE STUDENT REACTIONS
By
Thomas “Teege” Mettille Jr.
A thesis submitted in partial fulfillment of the requirements for the
Master of Science Degree in Communication.
Thesis Chair: Dr. S.A. Welch
THE UNIVERSITY OF WISCONSIN – WHITEWATER May 20, 2008
iii
Acknowledgements It simply would have been impossible for me to complete this enormous project without the love, support, assistance and help from my family, friends and professors. I owe more to my mother and father than I will ever be able to acknowledge. From my parents, I have learned a solid work ethic and determination that helped me to finish this research. I also learned the value of caring for the well-being of others, which also drove me to take on a project to better understand how to prevent unhealthy decisions among college students. My partner David helped create the time, space and motivation I needed to see this project to the end. Without his guidance, support and encouragement, it is doubtful that I would have finished. All of the professors who have moved me along the way to this point deserve mention. Professors from my undergraduate experience, Dr. Henry, Dr. Searles, Dr. Lebens, Dr. Poorman and Dr. Smith all saw potential in me that I had not yet recognized. However, they encouraged me to consider furthering my education, which brought me to that point. Dr. Baus and Dr. Brownson, who served on my committee, offered a tremendous amount of valuable advice and insight. Additionally, I had the privilege of learning from them in classes throughout my graduate experience. I am fortunate to have benefited from their knowledge and expertise. Finally, Dr. Welch’s kind, caring and patient mentorship has helped me more than I’ll ever be able to express. From my first day as a graduate student, all the way through my last, Dr. Welch has been there selflessly helping me along the way. Thank you.
iv
Table Of Contents Table of Tables v Abstract vii Introduction 1 Alcohol Use Among College Students 2
Rates and Frequencies of Alcohol Consumption 2 Risks of Alcohol Consumption 6 Alcohol Consumption Beliefs 11 Societal Involvement In Alcohol Reduction 14 Applying Cognitive Dissonance to Reduce College
Student Alcohol Consumption 19 Cognitive Dissonance Theory 23
The Creation of a Cognitive Consistency Theory 24 Areas of Study with Cognitive Dissonance Theory 28 Revisions of Cognitive Dissonance Theory 32 Criticisms of Cognitive Dissonance Theory 36 Cognitive Dissonance Theory and Alcohol Use 38
Methodology 43
Participants 43 Survey Design 44 Videos Utilized 46 Procedure 47
Results 48
Descriptive Statistics 48 Measurement of Dissonance 53 Measurement of Drinking Levels 56 Research Questions One Through Twelve 57
Discussion 71 Conclusions 71 Limitations 75 Final Comments 77
Appendices Appendix A – Statement of Informed Consent
Appendix B – Survey Copy
v
Table of Tables Table 1 43 Demographic Information of Participants Table 2 49 Healthy Drinking Table 3 49 Drinks Consumed Per Week, Collapsed Table 4 50 Drunk Driving Table 5 51 Miles Driven Drunk Table 6 51 Responsible Drinking Table 7 52 Drinking Interfered Table 8 53 Drinks Consumed Per Week, Complete Table 9 54 Healthy Amounts of Consumption Table 10 55 Healthy Drinking – Beliefs and Behaviors Difference Table 11 56 Drinks Consumed In One Night Table 12 58 Binge Drinking and Attack the Messenger Table 13 59 Binge Drinking and Rationalization Table 14 60 Binge Drinking and Accepting the Message
vi
< Continued > Table of Tables
Table 15 61 Binge Drinking and Behavioral Changes Table 16 63 Drunk Driving and Attack the Messenger Table 17 64 Drunk Driving and Rationalization Table 18 65 Drunk Driving and Accepting the Message Table 19 66 Drunk Driving and Behavioral Changes Table 20 67 Date Rape and Attack the Messenger Table 21 68 Date Rape and Rationalization Table 22 69 Date Rape and Accept the Message Table 23 70 Date Rape and Behavioral Changes
vii
Abstract of Thesis
Thomas “Teege” Mettille Jr.
Communication
Cognitive Dissonance Theory and Alcohol Awareness Messages: College Student Reactions
May 1, 2008
Dr. S.A. Welch, Thesis Chair
University of Wisconsin – Whitewater
viii
Cognitive Dissonance Theory and Alcohol Awareness Messages: College Student Reactions
College students spend more money on alcohol than they do on books, coffee,
tea, juice and soda, combined (Wechsler & Wuerthrich, 2002). Recent studies have
shown that binge drinking rates range from 34 to 44% of college students (Douglas et
al., 1997; Wechsler, Davenport, Dowdall, Moeykens & Castillo, 1994; Wechsler, Lee,
Kuo, Seibring, Nelson & Lee, 2002). Alcohol is so prevalent in the college
environment, that students, parents and even professors link the college experience with
excessive drinking (Butler, 1993; Lederman, Stewart & Russ, 2007).
Yet, the risks of binge drinking (Lederman, Stewart, Goodhart & Laitman,
2003) are serious. Research has identified a wide variety of harmful consequences as a
result of excessive drinking among college students. These risks include: unprotected
sexual behavior (Desiderato & Crawford, 1995), blackouts (Perkins, 2002), and even
death (Hingson, Heeren, Zakocs, Kopstein & Wechsler, 2002). Perhaps even more
alarming is the annual frequencies of these negative consequences, identified by
Hingson et al. (2002), including 600,000 student assaults, 500,000 accidental injuries
and 1,400 deaths.
In an attempt to deal with this alarming information campus administrators have
developed campaigns and programs designed to curb college drinking. However,
results have been elusive, as dangerous drinking has not declined over the past decade
(Faden & Fay, 2002; Wechsler et al., 2002; Hingson et al., 2005; Larimer & Crone,
2002; Peele, 2006; Wechsler, Lee, Kuo & Lee, 2000). In order to craft the most
effective message, one must consider the reaction of the intended audience.
ix
Festinger’s (1957) Cognitive Dissonance Theory provides insight into the
cognitive processes individuals experience when they receive information that is
counter to their beliefs. Festinger states that information that challenges the beliefs or
behavior an individual already has will create psychological discomfort. The theory
continues to suggest there are predictable responses that form individuals experience
that discomfort, or dissonance: they will accept the information as accurate but make no
changes, accept the information as accurate and make changes, they will attack the
messenger as incredible or they will rationalize the information in some way to relieve
the discomfort.
The present study applied Festinger’s (1957) Cognitive Dissonance Theory to
alcohol public service messages. Participants were measured to determine whether they
were currently in a state of dissonance concerning their alcohol use. The participants
then viewed three alcohol public service announcements, concerning alcohol poisoning,
date rape and drunk driving. The researcher captured responses the participants had in
order to determine if particular dissonance-reducing strategies were utilized.
Three conclusions are offered. College students appear to be utilizing “attack
the messenger” regarding messages of binge drinking and drunk driving, while utilizing
rationalization when viewing messages of date rape. Additionally, for all message
contents, the students responded that they did not intend to change their behaviors
based on the information presented. The results of this study can be illuminating` to
alcohol educators, campus administrators and future scholars.
1
Alcohol use among college students is perhaps one of the most prevailing
aspects of college culture. We know that college students spend more money on
alcohol than they do on books, coffee, milk, soda, juice or tea, combined (Wechsler
& Wuerthrich, 2002). Several recent studies have indicated that the levels of
dangerous drinking among college students ranges from 34 to 44% (Douglas et al.,
1997; Wechsler, Lee, Kuo, Seibring, Nelson & Lee, 2002; Wechsler, Davenport,
Dowdall, Moeykens & Castillo, 1994). While the behaviors of college students
have been well studied, it is important to consider the beliefs college students hold
about alcohol consumption. In doing so, scholars, campus administrators and
alcohol educators can open the door to the possibility that there is a conflict between
the beliefs and behaviors of college students, as it pertains to alcohol consumption.
This potential conflict is appropriate for analysis utilizing Cognitive
Dissonance Theory, developed by Festinger (1957). The theory predicts that if an
individual has two thoughts that are in conflict with each other, such as their beliefs
and their knowledge of their behaviors, a psychological discomfort exists that must
be resolved. This intrapersonal communication theory has been applied to explain a
vast array of phenomena, and can be appropriately applied to alcohol use. More
specifically, if there is disagreement between an individual’s beliefs and behaviors,
cognitive dissonance theory draws the road map to exploit that difference to
persuade an individual to make alternate behavioral choices.
The present study will examine three public service announcements
pertaining to alcohol use. The subject matter includes alcohol poisoning, date rape
2 and drunk driving. In each case, participants responded to a series of questions
designed to determine if cognitive dissonance is altering their perception of these
messages. The results serve an illuminating role in guiding alcohol educators,
campus administrators and future scholars.
Alcohol Use among College Students
Rates and Frequencies of Alcohol Consumption
An issue of great concern to many campus administrators is the current rate
of alcohol consumption among college students. Through media portrayals, word-
of-mouth and personal experiences, many people believe excessive alcohol
consumption is an essential part of the college experience (Lederman, Stewart &
Russ, 2007). A large portion of the student body chooses to drink at dangerous
levels, despite many of their peers abstaining completely. Alcohol is so engrained in
the college experience that students spend $5.5 billion annually on it, which is more
than they spend on soda, tea, milk, juice, coffee and books (Wechsler & Wuerthrich,
2002). However, recent scholarly studies have produced a less clear vision of the
role alcohol plays among today’s college students. The actual use of alcohol ranges
from frequent binge drinkers, to abstention, with large portions of the student
population rejecting alcohol completely, by abstaining. The experience of alcohol
abstainers is often overlooked in the media, but the experience of dangerous
drinkers has not been. This is likely due to the fact that students tend to
overestimate the alcohol consumption rate of their peers, which distorts the actual
alcohol consumption rates.
3 There is surprising agreement among scholars as to the actual frequencies of
alcohol consumption. O’Malley and Johnston (2002) compressed the data from
several independent survey studies to determine that approximately 70% of college
students self-reported alcohol use in the past month. This is supported by Wechsler,
Lee, Kuo & Lee (2000) who reported that a clear majority of college students self-
reported alcohol use in the past month. This range is higher than the rates reported
by non-college students of the same age group (O’Malley & Johnston, 2002). This
suggests college students are more likely to consume alcohol than they would be if
they did not attend college. However, it is important to keep in perspective that the
rates of alcohol consumption exist on a range, and that dangerous drinking does not
accurately describe the entire college population.
During the first year of college, approximately 25% of college students
choose to abstain from alcohol use (Lindsay, 2006). However, during the same time
period, approximately 20% of college students started consuming alcohol (Lindsay,
2006). This number may appear low, because it is only identifying students who
previously did not consume alcohol. When these figures are combined, we learn
that slightly more than half of college freshmen who previously did not consume
alcohol, decided to begin consuming alcohol. Lindsay (2006) reported that social
acceptability and a misperception of peer norms account for a portion of the
students who decide to begin drinking alcohol in college. The National Advisory
Council on Alcohol Abuse and Alcoholism (2002) reported that other explanatory
factors include: price of alcohol, advertising saturation, parental attitudes toward
4 alcohol, peer attitudes toward alcohol, the prevalence of a Greek system on campus
and a student’s individual living arrangements. Researchers have argued that these
factors encourage students who previously did not drink, to begin drinking. This is
a natural concern, as there is the possibility that students who begin drinking upon
entering college may develop dangerous drinking habits.
The term “dangerous drinking” refers to alcohol consumption behaviors that
leave individuals increasingly prone to negative consequences. The term is
advocated as a more appropriate and effective alternative to the term “binge
drinking” by Lederman, Stewart, Goodhart and Laitman (2003). Characteristics of
this behavior include frequent weekend binges, drinking to get drunk and drinking
quickly (Glindemann, Geller & Ludwig, 1996).
The rates of dangerous drinking (or binge drinking) among college students
have also produced a surprising level of agreement. Hingson, Heeren, Zakocs,
Kopstein and Wechsler (2002) report that within the previous month, 42% of
students had self-reported dangerous drinking behaviors (specifically, consuming
five or more drinks on a single occasion). Several studies have reported results of
dangerous drinking behaviors within a range of 34-44% (Douglas et al., 1997;
Wechsler et al., 2002; Wechsler, Davenport, Dowdall, Moeykens & Castillo, 1994).
Perhaps even more concerning is a report that identified 19% of students who could
be classified as frequent binge drinkers (Wechsler et al., 1994). While the
percentage of students who consume alcohol to a dangerous level is substantially
5 larger than those who abstain from alcohol, students view the difference between
the two groups as larger than it actually is.
College students over-estimate both the frequency and amount of alcohol that
their peers consume. Makela (1997) suggests that this may be a way of reducing an
individual’s cognitive dissonance resulting from her or his own choices. Nearly
three-quarters (73.8%) of students believe that they consumed alcohol less
frequently, and in smaller amounts, than their peers (Lederman & Stewart, 1998,
Lederman & Stewart, 2005). Additionally, the American College Health
Association (2004) reported that students overestimated the drinking behaviors of
their peers by 17% to 19%. This documented over estimation of peer drinking
habits can have a clear impact on the amount of alcohol consumed, as well as the
frequency of drinking occasions, through the desire to fit in.
The statistics found from a large amount of scholarly research (Douglas et
al., 1997; Wechsler et al., 2002; Wechsler, et al., 1994) raise several red flags, and
elevates patterns of alcohol consumption among college students to a level of
serious concern for administrators, as well as researchers. While it is clear the
actual rates and frequency of consumption ranges on a scale from abstention to
dangerous drinking, more students are making risky decisions than those who are
not. However, what may be more concerning than the rates and frequencies of
alcohol consumption are the potential risks these students may face from their
choices.
6 Risks of Alcohol Consumption
The risks of alcohol consumption, especially to the level of dangerous
drinking, must be kept at the forefront of the discussion when considering the
alcohol consumption habits of college students. As discussed earlier, the decisions
students make may put them at risk for negative effects that they did not anticipate.
The Centers for Disease Control (2004) identifies risky behavior as any actions a
person takes that will increase negative health-related outcomes. This definition can
be expanded in the case of alcohol use to expand beyond negative health-related
outcomes. For the purposes of alcohol consumption among college students, risky
behavior will be defined as any action a person takes that will increase negative
outcomes, including health, safety or legal consequences. This expanded definition
more appropriately fits the consequences outlined by previous researchers.
To better understand the negative effects an individual might experience as
the result of dangerous drinking, it is important to first discuss the risk factors that
have already been identified. It is important to know that an individual’s alcohol
use, as well as alcohol-related problems, peak during young adulthood (Grant et al.,
2004; Wechsler & Isaac, 1992). Additionally, we must understand that the short-
term consequences of dangerous drinking will be most likely to affect an individual
during the college-aged years. Risk factors have been identified on individual and
environmental levels.
Risk factors that will affect each individual include: being male (O’Malley &
Johnston, 2002), exhibiting lower levels of academic preparedness (Wood, Sher &
7 Bartholow, 2002) and drinking heavily before college (Wechsle, Dowdall,
Davenport & Castillo, 1995). The housing a student selects also serves as a risk
factor. Specifically, individuals who live at home will consume less alcohol, while
students who live in greek housing experience the highest drinking rates, followed
by students who live in on-campus dormitory housing (Wechsler et al., 2002;
Wechsler, Lee, Nelson & Kuo, 2002). Students also experience risk factors
resulting from the environment in which they surround themselves. The availability
and cost of alcohol in a certain community serves as a risk factor (Chaloupka &
Wechsler, 1996; Wechsler et al., 2000). The college a student attends also mediates
their level of risk for negative alcohol consequences. Specifically, the type of
school (Presley, Meilman & Leichliter, 2002), social environment on campus
(Maggs, 1997) and even geographic region (Wechsler et al., 1994) are
environmental risk factors for dangerous drinking. Taken together, the risk for
potential health, safety or legal consequences can be very serious.
Research identified several sub-groups of a college campus that report levels
of dangerous drinking that exceeds that of their peers. Specifically, students who
are members of athletic or Greek organizations report levels of binge drinking that
exceed the national average of 44%. Nearly half of female athletes (47%) report
binge drinking, while over half of male athletes (58%) also report the same behavior
(Wechsler & Weurthrich, 2002). However, students in Greek organizations report
numbers that are even more concerning, with 57% of sorority members and 73% of
fraternity members reporting behavior that can be classified as binge drinking.
8 Clearly, any negative consequences of dangerous drinking are likely to affect these
groups disproportionately.
The health consequences a student may experience as a result of dangerous
drinking have an expected range, from manageable situations to potentially fatal
outcomes. Researchers identified negative health consequences to include:
hangovers (Perkins, 2002), unprotected sexual behavior (Desiderato & Crawford,
1995), alcohol dependence (Knight et al., 2002), blackouts (Perkins, 2002), assault
(Hingson, Heeren, Winter & Wechsler, 2005; Presley & Cashin, 1996) and even
death (Hingson, Heeren, Zakocs, Kopstein & Wechsler, 2002). Perhaps even more
alarming is the annual frequencies of these negative consequences, including
600,000 student assaults, 500,000 accidental injuries and 1,400 deaths (Hingson et
al., 2002). The health consequences alone are jarring enough to garner the attention
of campus administrators, and students themselves. However, the broader category
of overall safety, beyond an individual’s physical health, is of concern as well.
Every campus community has some level of concern regarding student
safety. Unfortunately, the alcohol-related decisions of students may be negatively
impacting the safety on campus. Dangerous drinking can lead to driving under the
influence (Presley & Cashin, 1996), which, Hingson et al. approximate to happen
2.1 million times annually, or about 25% of all reported cases of drunk driving.
Female students who drink are at an increased risk of being victims of date rape,
unwanted sex, harassment and physical assault (Lindsay, 2006). Further, the more
an individual drinks, especially in a public forum (Rossow, 1996), the more likely
9 she or he are to be victims of violence (Swahn & Donovan, 2005; Wells & Graham,
2006; Bonomo et al., 2001). The seriousness of all of these situations is only
highlighted when we consider the amount of time local police departments spend
involved in them. All of these safety consequences could pull police away from
other aspects of campus safety not related to alcohol. While these sub-groups
represent higher-than-average drinking rates, all students who consume alcohol at
dangerous levels are at risk of a variety of consequences.
The legal consequences of dangerous drinking naturally include issues of
safety, since society has opted to legislate consequences to endangering public
safety. Of course, college students who are under the age of 21 have the potential
consequences of citations for violating a societal prohibition on drinking under age.
Beyond that, research has shown that being intoxicated increases aggression
(Graham, Bernards, Osgood & Wells, 2006; Leonard, Quigley & Collins, 2003).
Additionally, nearly one in four documented cases of driving under the influence
involves a college student (Hingson et al., 2002). One must factor in the time and
stress spent dealing with any legal impacts of college student drinking is time and
energy not spent on academic inquiries.
Yet, the negative impact of dangerous drinking extends beyond those who
are consuming the alcohol themselves, as researchers have found a variety of
“second-hand” effects of alcohol use. Second-hand alcohol effects can be defined
as situations or scenarios that impact other people who have not been drinking, such
as loud noise, vandalism, etc. Wechsler, Lee, Kuo and Lee (2000) found that nearly
10 three out of four students have dealt with at least one second-hand consequence of
alcohol use. According to the scholars, this includes 58% of students who have
been interrupted studying or sleeping due to someone else’s alcohol use, 50% of
students who have had to take care of a drunk student, and over one-fourth (29%) of
students who claim they have been insulted or humiliated by someone who had been
drinking. This unique perspective on the effects of alcohol use should be taken into
account when considering the different ways alcohol impacts a campus community.
A review of the existing literature makes clear that students who engage in
dangerous drinking are putting themselves at risk for a wide variety of negative
consequences (Hingson et al., 2002; Leonard, Quigley & Collins, 2003; Graham,
Bernards, Osgood & Wells, 2006). Scholars need to continue to join campus
administrators in attempting to find effective solutions to reduce dangerous drinking
among college students. While the health, safety and legal consequences a student
faces as a result of risky behaviors may appear to be an appropriate punishment for
poor choices, we should not lose sight of the bigger picture. Specifically, there are
large amounts of resources being spent on responding to alcohol-related incidents.
Additionally, with 1,400 annual student deaths involving alcohol (Hingson et al.,
2002), the lives of students and the psychological wellness of their peers are at risk.
Vigorously researched and effective solutions can be called upon to help reduce the
frequencies of dangerous drinking and the consequences of it.
11 Alcohol Consumption Beliefs
Along with the wide range of behaviors concerning alcohol use comes a wide
array of messages about alcohol consumption. In today’s society, there is no lack of
visibility of alcohol messages viewed by students. These messages range from
alcohol company sponsored messages encouraging the use of their product to public
awareness campaigns encouraging the disuse of alcohol. While each category of
messages can and should be measured for success rates, what is already clear is that
these messages have helped college students to develop a set of beliefs about
appropriate alcohol use. How these beliefs affect an individual’s choices
concerning alcohol use can be examined for both intuitive and counter-intuitive
relationships.
It is only logical to assume that the social environment of a college campus
will have an impact on an individual’s beliefs and behaviors concerning alcohol use.
Rabow and Duncan-Schill (1995) followed students through a month-long diary of
their alcohol usage, revealing four major findings. First, the researchers claims
there is a weekly pattern of college drinking, which peaks during the weekend.
Second, the scholars determined the students felt they were under a great deal of
stress and pressure, with alcohol serving as a release. According to the authors,
alcohol was used socially to celebrate various events, mark an occasion, or express
group solidarity. Finally, Rabow and Duncan-Schill highlighted that the beliefs and
behaviors regarding student alcohol consumption is both reinforced and enforced in
12 the social environment of a college campus. This goes on, even if the information
that is considered accurate via group consensus is factually wrong.
Wechsler and Wuerthrich (2002) produced work designed to confront the
environment in which college students find themselves in. According to the
authors, certain myths have become engrained in the college drinking environment,
despite being untrue. One myth is that if you work hard, you should play hard.
Wechsler and Wuerthrich claim this is untrue, because research indicates that the
more you drink (the harder you play), the less you end up working. Another myth
they identify is that virtually everybody on a college campus drinks dangerously.
However, according to the authors, the majority of students (56%) do not binge
drink, and one in five students does not drink at all, as addressed previously. They
identify the myth that most college students are opposed to efforts by university
administrators to curb alcohol consumption, yet nearly three-quarters of students
who don’t binge drink want stricter alcohol enforcement.
The surrounding community is also going to naturally impact the beliefs and
behaviors of college students, as it pertains to alcohol use. Wechsler and
Wuerthrich (2002) claim that most college campuses have dozens of drinking
establishments, whether they are bars or liquor stores, within two miles of the
campus. Naturally, there is a range of the number of drinking establishments within
a college town; however three schools were identified as having the most. The
authors reported that Florida State University, in Tallahassee, had 185 alcohol
establishments within two miles from the campus. They acknowledge that tied for
13 second, both with 156 alcohol establishments were the University of Vermont, in
Burlington and the University of Wisconsin, in Madison. This adds to both the
availability of alcohol and the prevalence of alcohol messages a student faces from
corporations advocating more alcohol use.
As was previously discussed, college students over-estimate the frequency
and amount of alcohol consumed by their peers by approximately 18% (American
College Health Association, 2004; Thombs, Wolcott & Farkash, 1997). While this
incorrect view of the norms within a peer group has a number of issues, one to be
concerned about is how this belief may impact an individual’s decisions regarding
how much alcohol is appropriate to consume. Parish and Parish (1991) determined
that individuals with lower levels of self-esteem were more likely to consume
alcohol in an attempt to fit in with what they mistakenly believe is the norm. The
logical inference is that those with higher levels of self-esteem may find they are
better able to resist peer pressure. However, regardless of their levels of self-
esteem, it appears that one powerful factor in the decision to consume alcohol is the
outcomes students expect from their decisions.
An individual’s expectancies can be understood as the anticipated outcomes
from an action or behavior. Students are likely to anticipate expectancies that are
both positive and negative, especially in the case of alcohol consumption behaviors.
Researchers have examined the link between an individual’s expectancies, and how
it might impact their decisions regarding alcohol consumption. Consistently,
researchers have determined there is a positive correlation between positive
14 expectancies and increased alcohol use (Burden & Maisto, 2000; Leigh, 1989;
Stacy, Bentler & Flay, 1994). However, the reverse has not been found to be true.
According to Noar, Laforge, Maddock & Wood (2003), there is an inconsistent
correlation between an individual’s alcohol consumption decisions and negative
expectancies. Essentially, Noar et al. contend that anticipating negative outcomes
from alcohol consumption is not powerful enough to prevent alcohol consumption.
While negative expectancies do not appear to prevent an individual from drinking,
they do appear to have an impact by reducing the amount of alcohol consumed
(Jones, Corbin & Fromme, 2001). That these expectancies exist, and are salient
enough to have some impact on a student’s alcohol consumption choices leaves an
open door for researchers.
If an individual has negative expectancies for her or his alcohol use, but she
or he still decide to consume alcohol, one could predict that the individual would
experience conflicted feelings. Specifically, that individual would be engaging in a
behavior that they expect will negatively impact them. This internal conflict would
still exist, even if there were positive expectancies concurrent with the negative
ones.
Societal Involvement In Alcohol Reduction
Currently, a majority of campus administrators report that drinking is a
problem on their campus (Wechsler, Seibring, Liu & Ahl, 2004). While these
administrators are clearly responding to the concerning statistics of dangerous
drinking, we are seeing our society choose to actively engage in the challenge of
15 reducing drinking among college students, through programs, interventions,
counseling resources and awareness campaigns. There exists a large number of
environmental causes to be addressed, including the norms of a society that says
college students will drink heavily.
Lederman, Stewart and Russ (2007) reported that currently, the college
experience is linked with the expectation of excessive alcohol consumption. Not
just the students believe this idea, many of whom do not engage in dangerous
drinking, but also by parents and professors (Butler, 1993). That this idea has
permeated all aspects of a college society (students, staff and parents) is concerning
enough. However, it also creates a unique challenge for campaigns or programs
designed to reduce the rates of dangerous drinking among college students. Yet,
despite the difficulty, there are serious risks to the current drinking habits that call
for innovative risk reduction programs (Sugarman & Carey, 2007).
The two main types of interventions that have been utilized in an attempt to
alter college student drinking patterns are education and “force of law” (Rothschild,
1999). The force of law techniques that have been used include raising the federal
drinking age in 1988 (Wagenaar & Toomey, 2002), to individual police programs,
such as “Operation Sting” in Madison, Wisconsin (Deshpande, 2004). Larimer and
Crone (2002) identify sub-categories of educational programs regarding dangerous
drinking: traditional information (knowledge-based campaigns), values clarification
and norms correcting. Lu (2005) reports that previous researchers have found high
16 levels of success for programs designed to correct college drinking norms (Barnett,
Far, Mauss & Miller, 1996; Haines & Spear, 1996).
The ways our society has opted to actively work toward reducing drinking
rates are both expensive and expansive. There is a large variety of programs being
offered, including a wide array being offered as early as fifteen years ago (Hansen,
1992). As Peele (2006) pointed out, dangerous drinking among youth has long been
an area of public health interventions, and this is increasingly becoming a global
concern (Hughes, Anderson, Morley & Bellis, 2007). Many of the interventions
targeted at young people have focused on nightclubs (Hughes et al., 2007). Other
communities would be wise to address accessibility and affordability of alcohol, as
one study has shown that those may affect the drinking rates of college students
(Kuo, Wechsler, Greenberg & Lee, 2003). However, many of these programs have
proven to be very expensive and difficult to maintain (Barnett, Far, Mauss & Miller,
1996).
Despite the huge amounts of work and money that have been spent on
attempting to reduce college drinking rates, consistent results showing their
effectiveness may be elusive. Youthful dangerous drinking has not declined over
the past decade (Faden & Fay, 2002; Wechsler et al., 2002; Hingson et al., 2005;
Peele, 2006; Wechsler, Lee, Kuo & Lee, 2000; Larimer & Crone, 2002). In fact, a
deeper analysis reveals that dangerous drinking may be getting worse. Wechsler,
Lee, Kuo and Lee (2000) report that between 1993 and 1999, the rates of binge
drinking among college students remained steady at 44% . However the researchers
17 showed that students who could be classified as frequent binge drinkers rose from
20% in 1993 to 23% in 1999. An interesting note is that during the same time
period, students who report abstaining from alcohol completely rose from 15% to
19%, according to the scholars.
Yet, additional research has been done on a more local basis, which
illuminates the issue among the students on college campuses. Crown (2000)
produced results that show the University of Wisconsin, Madison is far outside the
national average. Crown shows that at the University of Wisconsin, Madison,
students who could be classified as frequent binge drinkers rose from 31% in 1993
to 43% in 1999, compared to 20% and 23% during the same time period. In fact,
that percentage of frequent binge drinkers at the University of Wisconsin, Madison
(43%) is nearly identical to the national average of frequent and infrequent binge
drinkers (44%). Crown’s research also produced disappointing numbers concerning
those students who choose to abstain from alcohol completely. In 1993, according
to Crown, just six percent of students at the University of Wisconsin, Madison
claimed to abstain from alcohol completely. In 1999, Crown shows that this number
only increased to eight percent, while the national averages for the same time period
went from 15% to 19%. Clearly, the drinking behaviors of students at the
University of Wisconsin, Madison are more dangerous than those of their peers
nationally.
It is unclear if the information concerning the University of Wisconsin,
Madison is more fitting for the students here at the University of Wisconsin,
18 Whitewater. As has been discussed, drinking beliefs and behaviors will be impacted
by the campus climate and surrounding areas As stated earlier the University of
Wisconsin, Madison has the second-highest number of alcohol establishments
within a two-mile radius of campus in the country. Yet, the environment in the state
of Wisconsin would also have an impact on the campus climate. As such, it is
important to examine the behaviors of incoming students at the University of
Wisconsin, Madison, as they may be similar to those at the University of Wisconsin,
Whitewater. Approximately three out of five incoming students at the University of
Wisconsin, Madison can be classified as non-binge drinkers (ranging from
abstainers to moderate drinkers) (Brower, Rothschild & Saur, 2000). However, by
the end of their first year, less than one-third of students are still classified as non-
binge drinkers, (Brower, Rothschild & Saur, 2000), showing a dramatic shift in
consumption behaviors. Further research is required to determine if this change
would be consistent at smaller campuses around the University of Wisconsin,
Madison, or if their unique campus climate attracts students with different
behavioral patterns.
These concerns naturally call researchers to explore a variety of different
alternatives to the current methods. If huge levels of spending at virtually all levels
of government are not creating the desired results, then the methods may need to be
revisited. The present paper intends to help answer that call by applying Festinger’s
(1957) Cognitive Dissonance Theory to the current problem. By learning how to
harness the potential for behavioral change inherent with an individual in a state of
19 dissonance, alcohol reduction programs could begin to experience improved rates of
success.
Applying Cognitive Dissonance to Reduce College Student Alcohol Consumption
Today’s college students are very knowledgeable about alcohol and its side
effects (Lederman, Stewart, Goodhart & Laitman, 2003). In fact, nearly 80% of
students have received some form of alcohol education, with two-thirds reporting
they have read signs, posters or articles regarding alcohol use (Wechsler, Nelson &
Weitzman, 2000). Awareness campaigns may be, at some level, ineffective if they
are merely trying to inform college students about the basic facts about alcohol, as
they have been hearing those messages since high school, or earlier. Despite
knowing these facts, many students begin to drink, or drink excessively, because of
peer pressure or an incorrect view of social norms (Lindsay, 2006). Instead of
attempting to reeducate students about the same facts, there appears to be a great
deal of promise in the theory of Cognitive Dissonance. Specifically, programs
which give students information that will create psychological discomfort, by
challenging their pre-existing beliefs, may be the most effective. In fact,
researchers have already identified an example of this approach producing positive
results.
Makela (1997) reported on a phenomenon known as the majority fallacy, or
the false consensus. This phenomenon essentially occurs when people incorrectly
assume that their belief or behavior is shared by a majority of their peers. In regard
to alcohol consumption, the majority fallacy exists (Lederman & Stewart, 1998;
20 2005; Makela, 1997; American College Health Association, 2004; Lederman,
Stewart & Russ, 2007) when students over-exaggerate the amount and frequency of
alcohol consumption among their peer group. Makela suggests this exaggeration
may be a way of reducing cognitive dissonance, or the psychological discomfort of
having an accurate perspective of how much they drink compared to their peers.
The author reported support for this assertion by producing results that show the
majority fallacy is stronger in communities that take a restrictive stance toward
alcohol, when compared to those that are more permissive. Essentially, this means
that in permissive communities, where students feel freer to engage in alcohol
consumption, they do not need to convince themselves that they drink less than their
peers.
In contrast, those in restrictive communities experience psychological
discomfort, or dissonance when they consume alcohol, and utilize the majority
fallacy to rationalize their behavior. However, Makela’s results continue beyond
community norms, as the majority fallacy is stronger among participants who
possess views about alcohol consumption that would be classified as negative.
Makela’s results are not unique, as many scholars have shown that programs aimed
at correcting the majority fallacy are successful (Haines, 1993; 1996; Jeffrey &
Negro, 1996; Perkins, 2003). A logical follow-up question would be if the effects
of this cognitive dissonance could be recreated in other aspects of alcohol
knowledge, beyond just correcting misinformation about peer norms.
21 Armed with the theory of Cognitive Dissonance, a logical goal in developing
programs or campaigns aimed at reducing alcohol consumption among college
students would be to present information that challenges the belief system that
encourages them to drink at the rates they do now. This is supported by Markowitz
(2000), who studied tobacco cessation messages and determined that merely
providing information about the health risks of cigarettes was not effective in
convincing smokers they were personally vulnerable. Translating this information
to alcohol use among college students would imply that simply presenting
information about the risks of alcohol consumption would not be effective in getting
them to believe that they themselves were at risk. Messages meant simply to inform
may be too easily responded to with a student’s rationalization of her or his own
risk level.
An alternative perspective is offered, as research has found another caution
when attempting to create dissonance. Another study on tobacco use showed that
messages that were “very discrepant” from the information smokers had already
accepted as accurate since they created an attitude change opposite of what was
intended (McKennell and Thomas, 1967). It appears that, in this case, the intended
goal was to produce dissonance to alter an individual’s beliefs about tobacco use.
However, since the information was too far removed from what they had already
accepted, the respondents were able to quickly discredit the information, thereby
maintaining their consonance. These two examples clearly suggest that messages
22 need to moderately challenge an individual’s preconceived beliefs in order to be
most effective.
The challenge in creating messages regarding alcohol consumption is
preparing for the potential reaction of rationalization, as predicted by Festinger’s
(1957) theory. Specifically, upon dissonance arousal, individuals may rationalize
the new information as being inapplicable to their own lives. We know from Burns
and Goodstadt (1989) that students often don’t personalize media messages about
the risks of alcohol consumption. We also know that students are not likely to find
information about being at an increased risk of negative consequences at some
distant point in the future to be personally relevant. (Nisbett & Ross, 1980). Thus,
in order to produce the most effective messages, creators need to be aware of the
ability students have to disregard the message as not applicable to them, and attempt
to overcome that reaction before it happens.
Using alcohol consumption messages to create dissonance for students holds
great promise, and has already produced results in the area of the majority fallacy
(Lederman & Stewart, 1998; 2005; Makela, 1997; American College Health
Association, 2004; Lederman, Stewart & Russ, 2007). Once this dissonance has
been created, there is the potential, and documented occurrences, that students will
actively alter their behavior (Elliot & Devine, 1994) or alter their beliefs (Draycott
& Dabbs, 1998) in order to resolve the conflicting information. We can also
recognize that the absence of any dissonance regarding excessive alcohol use is
concerning, as Gaher and Simons (2007) identified that students who were most
23 ambivalent about the risks of alcohol use produced the highest results of dangerous
drinking. After reviewing all of this information, scholars have a clear opportunity
to guide administrators of alcohol reduction programs, by better understanding the
role of Cognitive Dissonance Theory in the alcohol consumption decisions students
make.
Cognitive Dissonance Theory
According to Festinger’s (1957) Cognitive Dissonance Theory, people are
exposed to new information in the context of their pre-existing knowledge.
Festinger continues that if the new events or information support the previously held
beliefs, then the individual feels supported as the new stimuli are in harmony with
the individual’s prior knowledge. This creates what Festinger referred to as a state
of consonance. However, Festinger also discussed a state of dissonance, or
discomfort, which would occur when new information or events stood in opposition
to previously held beliefs.
When the new information creates a sense of dissonance, there are four
reactions we could expect, based on Festinger’s (1957) theory. First, the individual
may choose to attack the messenger as a way of discrediting the new information.
Second, she or he may choose to rationalize the information, or essentially modify
the new stimuli in a fashion that it is no longer in opposition to previously held
beliefs. Third, the individual may accept the new information as accurate, yet
refuse to change her or his original beliefs, which would create a continuing, or
24 unresolved state of dissonance. Lastly, the individual may accept the new
information as accurate, and alter her or his original beliefs accordingly.
It is important to note that a state of dissonance can impact an individual’s
behavior, as she or he attempts to regain consonance. For example, most smokers
are fully aware of the health risks caused by their tobacco consumption (Fischer,
Haire-Joshu, Morgan, Rehberg & Rost, 1990; Greening & Dollinger, 1991).
However, they are more likely to perform the act of admitting these risks if they are
intending to quit smoking (Swinehart & Kirscht, 1966). This is an example of how
cognitive dissonance can impact the behavior of an individual. As our society looks
for ways to reduce the rate and amount of alcohol consumption, specifically among
college students, Festinger’s (1957) theory of Cognitive Dissonance could serve a
valuable role.
To better understand how Cognitive Dissonance Theory works, it is
important to understand the environment within which it was created. This section
will also explore the basic components of the theory. The next step is to review the
alterations the theory has undergone to reach its current form, after five decades of
research. In conclusion, an expansive consideration of theoretical criticisms and
responses will wrap up a comprehensive view of one of the most enduring and
heuristic theories that exist in the academic field of communication.
The Creation of a Cognitive Consistency Theory
In a comprehensive review of Cognitive Dissonance Theory, Harmon-Jones
and Harmon-Jones (2007) identify the environment in which the theory was created.
25 The authors point out that Festinger (1957) proposed the theory at a time when a
large number of cognitive consistency theories were being created in the field of
psychology. Other researchers have recognized that Festinger’s theory was unique
among the cognitive consistency theories, as it compared both consonant and
dissonant cognitions in relation to a primary cognition (Beauvois & Joule, 1996;
1999; Mills, 1999). Harmon-Jones and Harmon-Jones accurately recognize that the
primary cognition in the equation typically relates to some form of behavior,
creating another element that separates Cognitive Dissonance Theory from theories
attempting to explain similar phenomena. After the introduction of Festinger’s
theory, a great deal of research was generated (Jones, 1985). Harmon-Jones and
Harmon-Jones point out that the theory was most used until the 1970s, and in the
1990s, when the theory re-emerged.
The most basic element of Cognitive Dissonance Theory is that people
engage in “psychological work” when they hold multiple related elements of
knowledge that are in conflict with each other (Harmon-Jones & Harmon-Jones,
2007). This can be seen in one of the most often-cited and replicated experimental
tests of Cognitive Dissonance Theory. Festinger and Carlsmith (1959) developed a
boring task that a participant was asked to perform for some time. Following that,
the researchers asked the participant to recommend a confederate perform the task,
despite the participant not enjoying the task. When the researchers rewarded the
participant with a reward of one dollar, they subsequently reported less negative
feelings of the task than did the students they offered a reward of twenty dollars.
26 Festinger and Carlsmith contend that this is a clear example of Cognitive
Dissonance Theory at work. Specifically, the scholars suggested that students who
were offered a higher financial reward could easily justify their deceit as necessary
to obtain a valuable reward. However, they say that the students who only received
one dollar would be less likely to justify their deceit in exchange for just one dollar,
and thus, they needed to alter their perception of task enjoyment. This experiment
has come to serve as the cornerstone example of Cognitive Dissonance Theory.
Festinger (1957) recognized an important cognitive reaction occurs when an
individual finds two pieces of information, or cognitions, are in conflict with each
other. He points out that this can occur because of new events or information, but
that even in the absence of new cognitions, dissonance is likely an everyday
psychological reality. However, in order to trigger cognitive dissonance, Festinger
points out that the multiple cognitions must both be related to each other, as well as
in conflict. When multiple related and conflicting pieces of information exist, an
individual can be expected to be in a state of dissonance.
A mathematical equation was created in Festinger’s original theory to
measure the level, or magnitude, of dissonance an individual is in. Specifically,
Festinger says that the total level of dissonance an individual is under can be viewed
in the following equation:
D / (D+C)
when D equals the number of cognitions that are dissonant, and C equals the number
of cognitions that are consonant with a primary, or focal cognition. Subsequent
27 researchers have produced similar equations, which account for the weight an
individual gives to each cognition (Sakai, 1999; Shultz & Lepper, 1999), which
creates a mathematical allowance for a portion of Festinger’s original work that
suggested that the magnitude of dissonance is determined by the importance of the
cognitions that are in conflict with each other (Sarup, 1981). The present paper
utilizes a method of dissonance measurement that is similar to the original equation,
but giving more focus on the magnitude of dissonant cognitions.
By viewing the magnitude of an individual’s level of dissonance in a
quantitative perspective, we can better understand the original ways Festinger
(1957) suggested that people would attempt to reduce the magnitude of dissonance
they were experiencing. It is important to note that Festinger did suggest that a
natural reaction to the arousal of dissonance would be to engage in the
psychological work of reducing it. In the initial version of the theory, Festinger
contended that there are four ways to reduce the magnitude of dissonance: add
consonant cognitions, subtract dissonant cognitions, increase the importance of
consonant cognitions or decrease the importance of dissonant cognitions (Harmon-
Jones and Harmon-Jones, 2007). Future researchers have produced a substantial list
of specific activities individuals engage in to reduce dissonance, which will be
discussed more in depth further on. However, whether it is viewed in mathematical
or literal methods of reducing dissonance, there does appear to be some resistance to
dissonance reduction.
28
Even in the initial draft of the theory, Festinger (1957) recognized that
individuals may be resistant to reducing dissonance. While he believed individuals
will naturally begin attempting to reduce their dissonance, there are potential issues
that would prevent the successful completion of this psychological work. First,
Festinger recognized that reducing dissonance may be painful or involve a loss. In
the example of dangerous drinking, an individual may feel dissonance due to
knowing the risks of their drinking levels, but would be resistant to change their
behavior due to the potential loss of a social outlet. Another reason an individual
might resist dissonance reduction, according to Festinger, is that the present
behavior may be satisfying.
Applying this through the lens of dangerous drinking behaviors, an
individual may feel the benefits of dangerous drinking are satisfying enough to
continue in a state of dissonance. Finally, Festinger suggested that change may not
be possible. This could apply to addictive behaviors, effecting alcoholics, smokers,
drug users, etc. Festinger proposed that if an individual is unable to successfully
reduce the existence of dissonance, they will then attempt to avoid the triggers that
arouse dissonance, and minimize the magnitude of it.
Areas of Study with Cognitive Dissonance Theory
Cognitive Dissonance Theory has been the source of a wide variety of
different research projects (Harmon-Jones & Harmon Jones, 2007), with several
research themes+. Throughout the fifty years since Festinger (1957) initially
published the theory, it has been applied to a wide variety of areas. These areas of
29 study focus on the relationship between dissonance and personal development
(Chow & Thompson, 2003), guilt (Stice, 1992), marketing (Oshikawa, 1969) and
motivation (Brehm, 1956; Festinger & Carlsmith, 1959; Aronson & Mills, 1959).
Each of these areas offers additional insight into the actual workings of cognitive
dissonance.
Just before the debut of Festinger’s (1957) theory, Maslow (1954) put
forward a hierarchy of needs. According to Maslow’s theory, a person develops by
meeting needs in a pyramid-like sequence, unable to attain higher levels of “self-
actualization” without first meeting the more fundamental needs, such as food,
shelter and safety. Maslow suggests that this is the ultimate goal of human
development. Chow and Thompson (2003) applied Cognitive Dissonance Theory to
determine if it would impact an individual’s ability to thrive in their environment.
The researchers measured subjects level of personal development, followed by a
measure of dissonance, which they operationalized as a measure of problems in their
life. The scholars produced results which showed a negative relationship between
the amount of dissonance an individual measured and her or his measure of thriving.
Essentially, the results indicate that the more dissonance or psychological
discomfort between opposing beliefs or behaviors an individual has, the less likely
she or he is to advance toward self-actualization, according to Maslow’s hierarchy
of needs.
Work has also been done to compare the arousal of dissonance to the
psychological concept of guilt. Specifically, Stice (1992) developed a test to
30 determine the similarities between an individual experiencing guilt and an
individual experiencing dissonance arousal. Stice reported a great deal of
similarities, suggesting that Festinger’s (1957) Cognitive Dissonance Theory may
simply be a model of the concept of guilt. Specifically, Stice reports that both guilt
and dissonance can be defined as negative emotional arousals that require the
individual feel personally responsible for some action. It is clear that this concept
of dissonance may be the most appropriate conceptualization to apply to college
student’s reactions to their own dangerous drinking behaviors. Additionally, Stice
found both guilt and dissonance could be relieved through memory distortion,
performing a self-affirming act or consuming alcohol. However, it appears as
though Stice may be over-extending the results of the research. The similarities do
indicate that our common concept of guilt may be a form of dissonance, with similar
definitions, requirements and reduction techniques. However, the results do not
indicate that all previously documented examples of dissonance arousal to be guilt.
A primary example is that people experience dissonance after making a large
purchase (Festinger, 1957; Oshikawa, 1969), but there is no evidence that this
phenomenon could best be described as guilt.
The dissonance described in Festinger’s (1957) theory was quickly picked up
by the marketing profession, as they noticed the possibility that Cognitive
Dissonance Theory may impact people’s decisions to purchase or recommend
various products. Festinger’s theory states that after making a decision between
multiple choices, a person must handle the cognitions that highlighted the potential
31 benefits of the choice they rejected. These cognitions could be supported by
research conducted prior to the theory’s development, which showed evidence that
supported the existence of post-purchase dissonance (Ehrlich, Guttman, Schonbach
& Mills, 1947). Oshikawa (1969) determined that the marketing of a product serves
not just to encourage individuals to purchase a product, but to help them reduce
post-purchase dissonance, by reassuring them of the positive attributes of the choice
they made. All of this stands in contrast to Janis (1959), who contends that there is
little to no difference in the cognitive processes after a purchasing decision. Yet,
follow-up work by both Festinger (1964) cites an unpublished study that showed
evidence that individuals would alter their evaluations of accepted and rejected
options differently once a decision had been made (Brehm, Cohen & Sears, 1960).
While marketers focused on the post-decision thought processes and the
motivation to purchase, other researchers focused their efforts on the role cognitive
dissonance might play in motivation. Brehm (1956) produced work just before
Cognitive Dissonance Theory was published which analyzed the main components.
Specifically, Brehm focused on the dissonance one would feel when she or he had
absolutely free choice between two alternatives. Brehm found that cognitive
dissonance had no role in the overall evaluation of their decision when there was an
easy choice to make. However, evidence of cognitive dissonance was prevalent
when the participants were analyzing a difficult decision. This is in line with
Festinger’s (1957) forthcoming claim that individuals would need to reduce
dissonance after making a choice between two positive options. Festinger and
32 Carlsmith’s (1959) cornerstone study, where students induced dissonance to justify
deceiving a confederate for a reward of one dollar, but not for a reward of twenty
dollars, examines the role of dissonance in a situation of induced compliance.
Specifically, the researchers were able to determine that individuals could prevent
the arousal of dissonance if they were acting for a worthwhile reward. At the same
time, Aronson and Mills (1959) examined cognitive dissonance through the lens of
effort justification. Specifically, they produced a study where women were initiated
into a group utilizing either a severe, embarrassing initiation method, or a mild,
non-embarrassing initiation method. Women who were embarrassed to be initiated
into the group rated the group higher than women who were not. This is a paradigm
that says, when an individual’s decision to act required a great deal of effort,
dissonance was induced to justify that effort.
Revisions of Cognitive Dissonance Theory
Any social science theory that survives for over 50 years is bound to undergo
a series of revisions and alterations. Cognitive Dissonance Theory is no exception,
and many researchers have added perspectives to the theory that have better
described the intrapersonal communication phenomenon in question. Two main
theory revisions have emerged, as identified by Harmon-Jones and Harmon-Jones
(2007), as well as the development of a dissonance scale, and a series of specific
activities that have been shown to reduce dissonance. This section will seek to
explore and explain those revisions, to provide a fuller picture of the current
perspective on Cognitive Dissonance Theory.
33 Festinger (1957) claimed that individuals would engage in psychological
work to reduce dissonance. However, Dietrich (1990) collected information from
several scholars concerning specific activities individuals engage in as a form of
dissonance reduction. The nine activities Dietrich reported are: a) value affirmation
(Steele, 1988), b) re-assessing decision more positively (Steele, 1988), c) drinking
alcohol (Steele, Southwich & Crichtlow, 1981), d) listening to a comic routine
(Kidd & Berkowitz, 1976), e) helping someone (Kidd & Berkowitz, 1976), f)
attitude change (Steele & Liu, 1983), g) discounting the merit of an alternative
(Scheier & Carver, 1980), h) misattribution (Zanna & Cooper, 1974) and i)
receiving flattering information (Dietrich, 1990). The list compiled by Dietrich is a
solid compilation of researched activities that serve to reduce dissonance for people.
The scholar goes on to suggest that all of the items on this list serve as ego-
enhancement, to respond to the negative impact dissonance has on one’s self-
esteem. With the exception of drinking alcohol, it is logical to see each activity as
an example of ego enhancement. However, the example of alcohol can be viewed as
ego-enhancement, since alcohol consumption reduces an individual’s self-awareness
(Hull, Lerenson, Young & Sher, 1983), and that individuals in dissonance are
motivated to avoid self-awareness (Greenberg & Musham, 1981). This compilation
by Dietrich serves to enhance the theory by providing concrete examples of the
theoretical example of dissonance reduction.
The application of Cognitive Dissonance Theory has also been enhanced
with the creation of a scale to measure the phenomenon of cognitive dissonance.
34 The test designed by Cassel and Chow (2000) measures the amount of dissonance an
individual feels in his or her own life. This conceptualization of cognitive
dissonance is similar to the conceptualization utilized in the present study. This
perspective focuses on Festinger’s (1957) view of dissonance in a long-term
fashion. While dissonance is certainly stimulated by new events or information,
much dissonance will exist for extended periods of time. Cassel and Chow attempt
have created a quantifiable measurement tool to do that. The test created by the
scholars is intended to highlight subconscious areas of dissonance, so that the
individual taking the test may make intentional decisions to resolve the dissonance
they feel (Chow & Thompson, 2003). Yet, the creation of a measurable cognitive
dissonance scale exists only in the sphere of theoretical revisions to the theory.
The perspective that dissonance is aroused due to a threat to an individual’s
self concept has been advocated by Aronson (1968, 1999). The scholar claims that
each individual has her or his own “sense of self”, which serves as the primary
cognition to arouse dissonance if the individual’s behavior is inconsistent with their
own self-image. Since most people have a positive self-image, Aronson’s
theoretical revision supposes that negative behaviors will usually be the stimuli for
dissonance arousal. All of this leads to the main argument made by Aronson, that
self-esteem interacts with levels and frequency of dissonance arousal. Specifically,
he claims that individuals with lower levels of self-esteem will have fewer incidents
of dissonance, as they will not be as subconsciously bothered by negative behaviors.
The inverse is that he claims that individuals with higher levels of self-esteem will
35 have higher rates and incidents of dissonance arousal, as they will have more
psychological discomfort resulting from negative behaviors. It is important to note
however that many scholars have produced results that contradict the claims made
by Aronson (Beauvois & Joule, 1996, 1999), and specifically in the realm of
recidivist smokers (Gibbons, Eggleston & Benthin, 1997). Thus, it appears as
though Aronson’s revision is open to continued discussion and further research.
Steele (1988) added a revision to Festinger’s (1957) theory by focusing on
Festinger’s claim that individuals are personally motivated to resolve their
dissonance. Building on this portion of the theory, Steele connects dissonance
theory to the argument that individuals are also motivated to regulate their self-
image as morally and adaptively adequate. The scholar claims that individuals
utilize attitude change as a dissonance reduction strategy when the aroused
dissonance challenges their views of themselves as morally or adaptively adequate.
More simply, Steele claims that an individual will utilize attitude change if
dissonance threatens a positive view of her or his integrity. These claims were
supported by Steele’s research that showed that an individual would not utilize
attitude change to resolve laboratory-induced dissonance when they took an
opportunity to affirm an important personal value to themselves. However, there
are critics of this revision who have produced results that fit Steele’s research into
the scope of Festinger’s original theory (Simon, Greenberg & Brehm, 1995) and
scholars who produce results that they claim are difficult to fit within the scope of
Steele’s revisions (Aronson, Cohen & Nail, 1999). While there are critics of
36 individual revisions to Cognitive Dissonance Theory, there are also criticisms of the
entire theory to examine.
Criticisms of Cognitive Dissonance Theory
Critics of Festinger’s (1957) Cognitive Dissonance Theory have come from
two main argument lines. First, researchers claim that the theory has been
overextended (Lord, 1992; Bem & McConnell, 1970; Converse, 1970). Secondly, a
host of researchers have challenged the theory outright, claiming that there are
alternate explanations for the phenomenon predicted in Festinger’s theory (Bem,
1972; Zanna & Cooper, 1974; Fazio, Zanna & Cooper, 1977; Sarup, 1981). While
the present study utilizes Festinger’s original theory, this section will be focused on
giving a voice to those who have raised concerned about the theory.
As indicated, there are scholars who claim that researchers have
overextended Festinger’s (1957) original theory beyond the scope it can be
appropriately applied. The most well-laid argument suggesting dissonance theory
has been overextended was produced by Lord (1992), who reports that research has
shown individuals who have supposedly resolved dissonance do not report that they
recalled this process (Bem & McConnel, 1970). In his argument against the
extension of Cognitive Dissonance Theory, Lord argues that researchers should not
be insisting that participants are engaging in psychological processes that they do
not report doing. Going further, Lord cites Converse (1970), who claims that most
college-aged students do not hold strong attitudes toward most issues, which would
make it unlikely that they would feel psychological discomfort if one of those
37 attitudes was challenged. Lord’s main claim is that many examples of attitude
change resulting from dissonance arousal has a much simpler explanation, which is
that participants merely changed their attitudes, without psychological work being
necessary.
Perhaps of more concern is the claim by some Cognitive Dissonance Theory
researchers (Bem, 1972; Zanna & Cooper, 1974; Fazio, Zanna & Cooper, 1977;
Lord, 1992) that there are other explanations to explain the attitude change
described by Festinger’s (1957) theory. Many critics have challenged the most
well-known example of dissonance in action, the work done by Festinger and
Carlsmith (1959) which found that individuals who were paid one dollar to recruit a
confederate to a very boring task rated the task higher than those who were paid 20
dollars. Bem (1972) claims this could be explained merely through self-attribution.
Misattribution was utilized to avoid dissonance reduction in several studies
(Zanna & Cooper, 1974; Fazio, Zanna & Cooper, 1977), whereas participants who
were suspected of going through dissonance were offered an alternate explanation
for their negative feelings. Those who were given an alternate explanation for their
discomfort (such as external environmental factors) did not produce attitude change,
whereas those who were not given an alternate reason did produce attitude change
(Zanna & Cooper, 1974). The suggestion made by Lord (1992) is that since
misattribution resolves the theoretical dissonance an individual feels, perhaps the
dissonance is not strong enough to alter an attitude. While these criticisms warrant
38 notation, the theory does remain strong enough to apply to the previously stated
problems of dangerous alcohol use among college students.
Cognitive Dissonance Theory And Alcohol Use
As was previously discussed, college students are engaging in alcohol use
patterns that have the potential for seriously negative consequences. Cognitive
Dissonance Theory can be effectively applied to better understand the reasons
college students begin, and continue, these practices, even after they become
informed of the possible consequences. Research has identified clear links between
alcohol use and the predictions evident in Festinger’s (1957) theory. This section
will focus on providing insight into scholarly research showing a link between
alcohol behaviors and the three of the four main responses to inconsistent
cognitions: rationalization, attack the messenger and accept with changes. A vast
review of the extant literature does not reveal evidence of researched examples of
individuals accepting new information with no behavioral or belief changes. These
research examples will lead to the hypotheses utilized in the present study.
There are clear links between the two substances that make the connection
valid. We will consider examples of alcohol research alongside examples of
tobacco research, for the purposes of understanding the processes of cognitive
dissonance and substance use. For example, Eiser and Harding (1983) found that
smokers viewed alcohol consumption more positively than non-smokers. Another
study reported the inverse interaction effect, that adolescents who consumed alcohol
were more likely to start smoking than adolescents who did not consume alcohol
39 (Paavola, Vartiainen & Haukkala, 2004). We also know that men are more likely
than women to drink heavily, smoke, and drink and drive (Fennell, 1997),
suggesting a behavioral link between the dangerous behaviors that creates a logical
link. Markowitz (2000) concluded that smokers perceive themselves to be exempt
from smoking and non-smoking health risks, presumably to include alcohol use.
Considering this information, it is fair to utilize the vast amount of research
concerning tobacco use and cognitive dissonance to gain a better understanding of
the theory’s interaction with college students’ use of substances, most specifically
alcohol.
Research has produced some link between substance use and cognitive
dissonance. McMaster and Lee (1991) determined that smokers and non-smokers
may process information differently, with the implication that information
concerning the dangers of tobacco use should be presented in different ways to the
different groups. It is appropriate to consider that the same may be true for students
who use alcohol and those who abstain. Steele, Southwick and Critchlow (1981)
produced information that was concerning when comparing Cognitive Dissonance
Theory to alcohol consumption. Festinger’s (1957) original theory listed attitude
change as a dissonance reduction technique. However, according to Steele and
colleagues, attitude change was easily replaced with drinking beer as an effective
technique to reduce dissonance. Seeking to answer criticisms in advance, the
authors reported that the same was not found for heavy coffee drinkers, leaving the
potential that an effective way to reduce dissonance is to consume alcohol.
40 However, Steele et al. reported that increases in dissonance did not actually produce
in increase in the amount of alcohol consumed. What remains unclear is if the
induction of dissonance will make it more likely for students to consume alcohol in
any amount, as opposed to abstaining. However, generally speaking, Festinger’s
theory can be applied well to the drinking habits of college students.
Researchers have produced a large amount of evidence that individuals who
use alcohol or tobacco rationalize their behavior as a form of reducing dissonance.
One example is that smokers will minimize the estimation of their own smoking in
comparison to their peers (Tagliacozzo, 1979). Additionally, adolescent smokers
incorrectly estimate the number of their peers who smoke, while adult smokers are
able to correctly identify that information (Sherman, Presson, Chassin, Corty &
Olshavsky, 1983). This implies that the age group in question, college students,
may be more susceptible to over-estimating the substance use habits of their peers
than older people will. Similarly, McMaster and Lee (1991) reported that smokers
were more likely to utilize logical distortions concerning the risks of smokers, even
though there was no significant difference in the knowledge level. This research is
supported by a plethora of scholars who report results indicating that individuals
who smoke tobacco were more likely to alter information concerning smoking risks
than non-smokers (Dawley, Fleischer & Dawley, 1985; Loken, 1982; Worden,
Waller, Ashiyako & Sweeney, 1980; Weinstein, 1982; 1987). This information
supports that suggestion that individuals will rationalize information received in
order to resolve dissonance concerning the negative implications of their behavior.
41 Another well-researched dissonance reduction strategy is to attack the
messenger. McKennell and Thomas (1967) were among the first to recognize that
smokers were utilizing this cognitive process and to suggest that health educators
respond accordingly. In addition, there have been several researchers who
determined that smokers challenged health risk information as potentially invalid
(Feather, 1962; Pervin & Yatko, 1965; Swinehart & Kirscht, 1966; Dawley,
Fleischer & Dawley, 1985). This would explain why approximately 43 million
Americans started smoking within two decades of the 1965 Surgeon General’s
Report on Smoking and Health (USDHHS, 1989), which warned everyone about the
dangers of smoking. These examples can all clearly be viewed through the realm of
attack the messenger, which Aronson, Turner and Carlsmith (1963) called a change
in source credibility.
While the research has produced fewer results, there are still examples of
individuals accepting discrepant information, and making behavioral changes as a
result (Gibbons, Eggleston & Benthin, 1997; Viscussi, 1992). For example,
smokers who were beginning an attempt to quit smoking reported the highest levels
of risk perception when compared to those who had already quit, or were not
attempting to quit (Gibbons, Eggleston & Benthin, 1997). Viscussi (1992) reported
that the higher an individual’s risk perception was, the more committed they were to
a smoking cessation program. These are both examples of information that aroused
dissonance resulting in a change of behavior. The individuals who decided to quit
smoking as a result of that information could have easily attacked the messenger or
42 rationalized their behavioral choices. Instead, the individuals accepted the
information, and made changes because of it. This represents the fourth major facet
of predicted responses based on Cognitive Dissonance Theory.
As a result of the research on each of these facets, research questions were
developed to determine if dissonance would result in the responses predicted. To
gain a fuller understanding, research questions were developed to determine student
responses to messages concerning three different topics: binge drinking, drunk
driving and date rape. We can examine the results of each facet of dissonance
within each predicted response, generating the following twelve research questions:
RQ1: Will dissonant alcohol users be more likely to attack the messenger than consonant alcohol users, when viewing a message concerning binge drinking? RQ2: Will dissonant alcohol users be more likely to rationalize than consonant alcohol users, when viewing a message concerning binge drinking? RQ3: Will dissonant alcohol users be more likely to accept the message than consonant alcohol users, when viewing a message concerning binge drinking? RQ4: Will dissonant alcohol users be more likely to make behavioral changes than consonant alcohol users, when viewing a message concerning binge drinking? RQ5: Will dissonant alcohol users be more likely to attack the messenger than consonant alcohol users, when viewing a message concerning drunk driving? RQ6: Will dissonant alcohol users be more likely to rationalize than consonant alcohol users, when viewing a message concerning drunk driving? RQ7: Will dissonant alcohol users be more likely to accept the message than consonant alcohol users, when viewing a message concerning drunk driving?
43
RQ8: Will dissonant alcohol users be more likely to make behavioral changes than consonant alcohol users, when viewing a message concerning drunk driving? RQ9: Will dissonant alcohol users be more likely to attack the messenger than consonant alcohol users, when viewing a message concerning date rape? RQ10: Will dissonant alcohol users be more likely to rationalize than consonant alcohol users, when viewing a message concerning date rape? RQ11: Will dissonant alcohol users be more likely to accept the message than consonant alcohol users, when viewing a message concerning date rape? RQ12: Will dissonant alcohol users be more likely to make behavioral changes than consonant alcohol users, when viewing a message concerning date rape?
Methodology
Participants
Participants (N=230) were students at the University of Wisconsin –
Whitewater. The researcher attended ten different classes to recruit participants, six
of which were in the Communication department, with the remaining four from the
Safety Studies department. There were no surveys rejected due to incomplete data,
or other disqualifying information. All participants received the same statement of
informed consent, survey, videos, and accompanying information. Table one
displays the demographic information of the entire sample set.
44
Table 1 Demographic information of participants Sample Group (N=230)
SEX
YEAR IN SCHOOL Males 109 (47.4%) Freshman 2 (0.9%)
Females 121 (52.6%) Sophomore 28 No Response 0 (0.0%) Junior 72
Senior 122 AGE 5th Year + 6 (2.6%)
18 1 (0.4%) No Response 0 (0.0%) 19 12 (5.2%) 20 44 (19.1%) RACE 21 74 (32.2%) African-American 15 (6.5%) 22 53 (23.0%) Asian-American 5 (2.2%) 23 26 (11.3%) Caucasian 200 24 8 (3.5%) Hispanic 4 (1.7%)
25+ 12 (5.2%) Native-American 1 (0.4%) No Response 0 (0.0%) Other 3 (1.3%)
No Response 2 (0.9%) An analysis of the demographics of the survey sample reveals several items
of note. First, the sample had slightly more females than males. Second, the study
consisted of students predominantly aged 20 to 23, as they represent 86% of
respondents. Over half of participants (53%) classify themselves as Seniors, with
nearly an additional one-third of respondents self-identifying as Juniors (31.3%).
Lastly, the overwhelming majority (87%) of respondents were Caucasian students,
with just 6.5% self-identifying as African-American, 2.2% self-identifying as Asian-
American, and less than two percent in every other categorization (Hispanic, Native
American, “other” and no response).
Survey Design
The research instrument utilized was a survey designed by the researcher.
The survey contained several questions designed to focus on the beliefs participants
45 had about alcohol use, as well as their alcohol consumption behaviors. The
descriptive statistics for each of these questions will be discussed in the results
section. However, within the survey were three questions which will be used to
group participants for statistical analysis.
Each participant was asked two questions designed to determine if they were
in a state of dissonance concerning their alcohol use. First, individuals were asked
to identify how many drinks they consumed during an average week, in an open-
ended question. Second, participants quantified the “greatest number of drinks the
average UWW student could consume, while still being a healthy drinker.” By
comparing these figures, the researcher was able to determine if an individual’s
beliefs were in conflict with her or his behaviors.
The completion of the survey occurred after each of three videos was played
for the participants. The students were given the same four statements requiring a
response on a likert-type scale concerning each video. The statements were
designed to correlate with the four typical responses individuals have to dissonance
arousal: accept the message with no behavioral changes, accept the message with
behavioral changes, rationalize the information or attack the messenger. The survey
includes a place for students to respond to each of the four statements, in a
scrambled order, after each survey. The four statements were:
I – I believe the information is accurate. (Accept the message) II – The information presented applies to me (Rationalize) III – The creator of this video was credible (Attack the messenger)
46
IV – I am likely to change my behaviors because of this information (Behavioral changes)
Videos Utilized
Participants were shown three videos available through an online website,
pertaining to different topics. The researcher selected a video concerning binge
drinking, date rape and drunk driving. The videos were selected primarily for their
message content, with attention to quality and length.
Drunk driving. The video pertaining to drunk driving was 30-seconds long,
and was professionally produced by the Ad Council. The video begins with loud
music, and two young women who appear to be visibly drunk dancing. While
dancing, one of the women accidentally hits her teeth with a beer bottle, causing
two of them to fall out. The women begin laughing while a narrator says, “It’s easy
to tell if you’ve had way too many.” As the scene cuts to the doorway, we see
another young woman drinking a sip of beer, and leaving with keys in her hand.
The narrator continues by saying, “but what if you’ve had just one too many?
Buzzed driving is drunk driving.”
Date rape. The video pertaining to date rape was 25-seconds long, and
produced by a college student as a class assignment. The video plays dramatic
music, while a scene plays out backwards. Specifically, the video plays as though it
is being rewound, as a man guides a clearly drunk woman into a bedroom, after
picking her up from a chair. As the video continues, we see that she appears to be
passed out in the chair, because earlier in the night, the man had slipped a pill in her
drink. Throughout the video, text-based messages are displayed. First, we learn
47 that, “somewhere in America, a woman is raped every two minutes.” The next
message reads, “the majority of rapes among college women involve alcohol or date
rape drugs.” The video concludes with a warning stating, “party safe! Watch your
drink and stick with your friends.”
Binge Drinking. The video pertaining to binge drinking was 29-seconds
long, and produced by a college student as a class assignment. The video plays
upbeat dance music, while a person is seen pouring themselves four shots of
alcohol. As the man drinks the shots, a text-based message is displayed on the
screen. The video reports that a large percentage of college students binge drink.
As the man consumes all four shots, he is shown stumbling to reach another one,
before falling over, with the shot glass falling on top of him. The video concludes
with the individual appearing to be passed out, with the text-based warning that
“over 30,000 students are hospitalized each year for alcohol poisoning.” Finally, a
text-based message covers another image of the individual passed out, reading “If
you drink, drink responsibly.”
Procedure
Survey data was collected in a uniform fashion to minimize resulting
variance from each group of participants. In each instance, the professor introduced
the student researcher, who introduced the research project. After a brief
explanation of the research project, each participant received and signed a statement
of informed consent. The blank surveys were then distributed, and participants
filled out the information regarding their own beliefs and behaviors, as well as their
48 demographic information, before the videos were presented. Once the entire group
had completed the first portion of the surveys, the videos were played, in a random
order. After each video, the researcher paused to allow students time to respond to
four statements on a likert-type scale. After the final video, the surveys were
collected, and the researcher answered any questions participants may have had.
Results
Descriptive Statistics
The survey instrument utilized asked a series of questions designed to better
understand both the beliefs, as well as the behaviors concerning the alcohol use
among participants. These questions provided several items of insight that do not
directly relate to the research questions posed. As such, those results will be
reported in this section.
Healthy drinking. On a likert-type scale, participants were asked to respond
to the following statement: “the level of alcohol I drink per week is healthy.”
Participants were given the options of strongly agree, agree, disagree and strongly
disagree. The results were converted numerically, with four representing “strongly
agree”, three representing “agree”, two representing “disagree” and one representing
“strongly disagree”. Overall, the students reported that they believe the amount of
alcohol they consume per week is healthy (n=229, M=3.02, SD=.89), and the
frequencies can be seen in table two.
49
Table 2 – Frequencies of responses to “The level of alcohol I drink per week is healthy.”
Healthy Drinking Strongly Agree 81 (35.2%)
Agree 83 (36.1%) Disagree 54 (23.5%)
Strongly Disagree 11 (4.8%) No Answer 1 (0.4%)
An area of potential concern for future researchers, as well as alcohol
educators, is that over one-fourth (28.3%) of respondents do not feel that the amount
of alcohol they drink per week is healthy. That is a large number of college
students who classify their drinking as unhealthy. The number becomes even more
concerning when you consider that many college students who consume alcohol at
unhealthy levels may have already rationalized their alcohol consumption behaviors
as healthy. For comparison, table three lists the frequency of answers to the open-
ended question, “how many drinks do you consume on an average week”, split
equally into four groups for scores ranging from zero to 60.
Table 3 – Frequencies of responses to “How many drinks do you consume on an average week?”
Drinks Consumed Per Week 0 to 1 58 (25.2%) 2 to 6 59 (25.7%)
7 to 12 54 (23.4%) 13 to 60 54 (23.4%)
No Answer 5 (2.2%) Drunk driving. On a likert-type scale, participants were asked to respond to
the following statement: “it is sometimes okay to drive under the influence of
alcohol.” Participants were given the options of strongly agree, agree, disagree and
strongly disagree. The results were converted numerically, with four representing
50 “strongly agree”, three representing “agree”, two representing “disagree” and one
representing “strongly disagree”. Overall, the students reported that they do not
believe it is acceptable to drive under the influence of alcohol (n=230, M=1.54,
SD=.74), and the frequencies can be seen in table four.
Table 4 – Frequencies of responses to “It is sometimes okay to drive under the influence of alcohol.”
Drunk Driving Strongly Agree 0 (0.0%)
Agree 35 (15.2%) Disagree 54 (23.5%)
Strongly Disagree 141 (61.3%) No Answer 0 (0.0%)
The results indicate a potential success in the area of alcohol education.
Specifically, a majority of students (61.3%) strongly disagree with the sentiment
that it is sometimes okay to drive under the influence of alcohol, while the
overwhelming majority (84.8%) strongly disagree or disagree. However, a potential
cause for concern amongst alcohol educators and future researchers is the
comparison of that information with the self-reported distances participants have
driven under the influence of alcohol. In an open-ended question, students
responded to the following question, “what is the longest distance (in miles) you
have driven under the influence of alcohol. (You believe your driving may have
been impaired.” The responses indicate that students have driven an average of over
10 miles (n=226, M=10.77, SD=19.06) under the influence of alcohol. Table five
offers the frequencies of that question, split into four groups, utilizing the best
available median split. What the data makes clear is that only a small minority
51 (15.2%) of students believe there are acceptable situations in which to drive a car
under the influence of alcohol, yet nearly two-thirds of students (63.2%) have done
so.
Table 5 – Frequencies of responses to “What is the longest distance you have driven while under the influence of alcohol?
Miles Driven Drunk 0 80 (34.8%)
1 to 3 49 (21.3%) 4 to 15 50 (21.7%)
20 to 120 47 (20.2%) No Answer 4 (1.7%)
Responsible drinking. On a likert-type scale, participants were asked to
respond to the following statement: “I am a responsible drinker.” Participants were
given the options of strongly agree, agree, disagree and strongly disagree. The
results were converted numerically, with four representing “strongly agree”, three
representing “agree”, two representing “disagree” and one representing “strongly
disagree”. Overall, the students reported that they do believe that they are
responsible drinkers (n=228, M=3.27, SD=.65), and the frequencies can be seen in
table six.
Table 6 – Frequencies of responses to “I am a responsible drinker”
Responsible Drinking Strongly Agree 86 (37.4%)
Agree 120 (52.2%) Disagree 20 (8.7%)
Strongly Disagree 2 (0.9%) No Answer 0 (0.0%)
The results indicate that students are comfortable with their level of drinking,
and that only a small minority (9.6%) believes that their alcohol consumption is not
52 responsible. It is important to remember that these responses are self-reported,
which makes it necessary to compare the results to other information. Specifically,
students were asked to respond to the following statement, “my drinking has
interfered with my academic or personal life at least once” on a likert-type scale.
The responses can be seen in table seven. The results indicate that overall, students
believe alcohol has interfered in their academic or personal life to some degree
(n=229, M=2.28, SD=1.04), with just over half (50.5%) of students disagree with
that statement, while 49.1% agree.
Table 7 – Frequencies of responses to “my drinking has interfered with my academic or personal life at least once.”
Drinking Interfered Strongly Agree 26 (11.3%)
Agree 87 (37.8%) Disagree 42 (18.3%)
Strongly Disagree 74 (32.2%) No Answer 1 (0.4%)
Descriptive analysis. A careful review of the descriptive statistics reported
offers guidance for both future researchers, as well as alcohol education
practitioners. Alcohol education practitioners can also utilize these results to
understand what areas students may be most receptive to new information. Future
researchers can utilize the results offered to craft a deeper measurement of cognitive
dissonance, as it pertains to the alcohol consumption beliefs and behaviors of
college students.
53 Measurement of Dissonance
In order to best answer research questions one through twelve, it was
necessary to group participants into levels of dissonance. This was determined
utilizing the answers to two specific, open-ended questions. “How many drinks do
you consume on an average week?” and “What is the greatest number of drinks per
week the average UWW student could consume, while still being a healthy drinker.”
The application of Festinger’s (1957) Cognitive Dissonance Theory occurs when
assuming that individuals who drink more than they believe is healthy would be in a
state of psychological discomfort, or dissonance. Table eight shows the frequency
of responses to the question “how many drinks do you consume on an average
week?” while table nine shows the frequency of responses to the question, “what is
the greatest number of drinks per week the average UWW student could consume,
while still being a healthy drinker?”
Table 8 – Frequencies of responses to “how many drinks do you consume on an average week?”
Drinks Consumed Per Week0 32 (12.9%) 10 29 (12.6%) 23 2 (0.9%) 1 26 (11.3%) 11 1 (0.4%) 24 1 (0.4%) 2 14 (6.1%) 12 4 (1.7%) 25 6 (2.6%) 3 11 (4.8%) 13 3 (1.3%) 29 1 (0.4%) 4 15 (6.5%) 15 8 (3.5%) 30 7 (3.0%) 5 11 (4.8%) 16 2 (0.9%) 40 3 (1.3%) 6 8 (3.5%) 17 1 (0.4%) 47 1 (0.4%) 7 3 (1.3%) 20 14 (6.1%) 58 1 (0.4%) 8 17 (7.4%) 21 1 (0.4%) 60 3 (1.3%)
N/A 5 (2.2%)
54
Table 9 – Frequencies of responses to “what is the greatest number of drinks per week the average UWW student could consume, while still being a healthy drinker?
Healthy Amounts Of Consumption0 2 (0.9%) 10 29 (12.6%) 30 8 (3.5%) 1 3 (1.3%) 12 6 (2.6%) 33 1 (0.4%) 2 17 (7.4%) 13 1 (0.4%) 35 2 (0.9%) 3 17 (7.4%) 14 4 (1.7%) 40 2 (0.9%) 4 17 (7.4%) 15 8 (3.5%) 45 1 (0.4%) 5 29 (12.6%) 18 3 (1.3%) 50 4 (1.7%) 6 12 (5.2%) 20 16 (7.0%) 65 1 (0.4%) 7 22 (9.6%) 21 1 (0.4%) 75 1 (0.4%) 8 9 (3.9%) 24 1 (0.4%) 9 2 (0.9%) 25 2 (0.9%) N/A 9 (3.9%)
While the results offer a wide spread of results, it is important to view the
overall picture of these results, by examining the average scores. On average,
students say they drink less than ten drinks per week (n=225, M=9.46, SD=11.28).
As table 9 shows, over half of students (58.8%) consider the average number of
drinks consumed per week (9.46) to be unhealthy. However, this is within the range
of what students overall consider to be unhealthy (n=221, M=11.06, SD=11.36).
Yet, these results are most valuable, when each participant’s answers are compared
together.
The researcher was able to develop a range of dissonance concerning their
alcohol use by comparing their beliefs about a healthy amount of alcohol
consumption with their actual alcohol consumption behaviors. To develop this
score, the researcher subtracted how much an individual reportedly drinks per week,
from the amount of drinks per week that they believe to be healthy. Table ten
reports the results of this computation. A positive score indicates than the
participant believes a healthy level of drinking is more than they believe they
55 consume per week. A negative score indicates that the participant believes they
consume more alcohol in a given week than they believe to be healthy. Thus, a
score of zero or above represents individuals who are consonant about their level of
alcohol consumption. Participants with a negative score indicate that they are in a
state of dissonance as their behavior of alcohol consumption is at a level that they
personally believe is not healthy. Descriptive statistics indicate that students are
consonant about their level of alcohol consumption, overall (n=219, M=1.548,
SD=10.636).
Table 10 – Computed difference between self-reported belief of what constitutes “healthy drinking”, and individual behaviors.
Healthy Drinking – Beliefs and Behaviors Difference -42 1 (0.4%) -6 8 (3.5%) 9 2 (0.9%) -40 1 (0.4%) -5 4 (1.7%) 10 7 (3.0%) -35 1 (0.4%) -4 4 (1.7%) 14 1 (0.4%) -25 2 (0.9%) -3 7 (3.0%) 15 1 (0.4%) -20 2 (0.9%) -2 8 (3.5%) 16 1 (0.4%) -18 2 (0.9%) -1 6 (2.6%) 17 3 (1.3%) -17 2 (0.9%) 0 23 (10.0%) 18 1 (0.4%) -15 2 (0.9%) 1 16 (7.0%) 20 3 (1.3%) -14 1 (0.4%) 2 17 (7.4%) 24 1 (0.4%) -13 2 (0.9%) 3 13 (5.7%) 25 1 (0.4%) -12 1 (0.4%) 4 12 (5.2%) 28 1 (0.4%) -10 5 (2.2%) 5 29 (12.6%) 30 1 (0.4%)
-9 1 (0.4%) 6 5 (2.2%) 34 1 (0.4%) -8 3 (1.3%) 7 10 (4.3%) 48 1 (0.4%) -7 1 (0.4%) 8 4 (1.7%) 50 1 (0.4%)
The respondents were divided into three categories, based on the above-listed
results. Individuals with a score of zero or above (n=155) are classified as
consonant alcohol users. Individuals with a score of –1 to –5 (n=29) are classified
56 as dissonant alcohol users. Individuals with a score ranging from –6 to –42 (n=35)
are classified as very dissonant alcohol users.
Measurement of Drinking Levels
The survey was also designed to capture the amount of alcohol participants
consume on an average night of drinking. Specifically, participants were asked to
respond to the following open-ended question, “In an average night of drinking,
how many drinks do you consume?” The results indicate high levels of drinking in
one night, with average scores that are considered to be binge drinking (n=228,
M=5.80, SD=4.01). The frequencies of responses to this question are reported in
table 11, with results ranging from zero to 20.
Table 11 – Frequencies of responses to “in an average night of drinking, how many drinks do you consume?”
Drinks Consumed In One Night 0 21 (9.1%) 10 26 (11.3%) 1 11 (4.8%) 11 3 (1.3%) 2 19 (8.3%) 12 4 (1.7%) 3 20 (8.7%) 13 3 (1.3%) 4 22 (9.6%) 14 1 (0.4%) 5 31 (13.5%) 15 7 (3.0%) 6 18 (7.8%) 17 1 (0.4%) 7 10 (4.3%) 18 1 (0.4%) 8 23 (10.0%) 20 1 (0.4%) 9 6 (2.6%) N/A 2 (0.9%)
The respondents were divided into three categories, based on the above-listed
results. Individuals with a score of zero to three (n=71) are classified as moderate
alcohol users. Individuals with a score of four to nine (n=110) are classified as high
alcohol users. Individuals with a score above ten (n=47) are classified as excessive
alcohol users.
57 Research Questions One Through Twelve
As was discussed earlier, there are two sets of research questions. The
twelve research questions focused specifically on dissonance-reducing reactions to
various messages, with an independent variable of the amount of dissonance each
participant had between the amount of alcohol they consumed on an average week,
versus how much they believed was a healthy level. The participants were then
grouped into three categories, and their reactions to each of the three videos were
statistically analyzed.
Binge drinking and attack the messenger. Research question one asked,
“Will dissonant alcohol users be more likely to attack the messenger than consonant
alcohol users, when viewing a message concerning binge drinking?” To answer
this, a one-way ANOVA was used to test the differences among responses to the
statement “the creator of this video was credible” between very dissonant, dissonant
and consonant alcohol users. The responses varied significantly between the
groups, F (2, 212) =3.622, p = .028. Scheffe post-hoc comparisons of the three
groups indicate that very dissonant alcohol users (M =2.314) were less likely than
dissonant alcohol users (M=2.793) to say that the messenger was credible. Thus, the
lower score for users who were very dissonant indicates that they were attacking the
messenger more than dissonant alcohol users. Comparisons between the consonant
alcohol users (M=2.589) and the other two groups were not statistically significant
at p < .05. The mean scores are also indicated in table 12.
58
Table 12 – Differences in responses to “the creator of this video is credible”, after viewing the binge drinking video. Binge Drinking and Attack the Messenger
Very Dissonant Dissonant Consonant
M = 2.314 M = 2.793 M = 2.589 Note: judgments were made on a 4-point scale (1 = strongly disagree, 4 = strongly agree)
The research question specifically sought a difference between individuals
who are consonant or dissonant, which the results did not find at a level of statistical
significance. Thus, the answer to the research question is no, there is not a
statistically significant difference between individuals who are consonant or
dissonant concerning their alcohol use. However, the results indicate that
participants were significantly more likely to attack the messenger if they were very
dissonant, as opposed to individuals who are dissonant. This data set indicates that
individuals who are moderately dissonant are more willing to consider messages
concerning binge drinking credible than individuals who are very dissonant.
Binge drinking and rationalization. Research question two asked, “Will
dissonant alcohol users be more likely to rationalize than consonant alcohol users,
when viewing a message concerning binge drinking?” To answer this, a one-way
ANOVA was used to test the differences among responses to the statement “the
information presented applies to me” between very dissonant, dissonant and
consonant alcohol users. The responses varied significantly between the groups, F
(2, 215) =4.940, p = .008. Scheffe post-hoc comparisons of the three groups
indicate that very dissonant alcohol users (M =2.543) were more likely than
59 consonant alcohol users (M=2.033) to say that the information applied to them.
Thus, the higher score for users who were very dissonant indicates that they are
more likely to consider the information applicable than consonant alcohol users.
Comparisons between the dissonant alcohol users (M=2.414) and the other two
groups were not statistically significant at p < .05. The mean scores are also
indicated in table 13.
Table 13 – Differences in responses to “the information presented applies to me”, after viewing the binge drinking video.
Binge Drinking and Rationalization
Very Dissonant Dissonant Consonant M = 2.543 M = 2.241 M = 2.033
Note: judgments were made on a 4-point scale (1 = strongly disagree, 4 = strongly agree)
The research question specifically sought a difference between individuals
who are consonant or dissonant, which the results did find at a level of statistical
significance. However, the results do not indicate that the participants were using
rationalization, as individuals who believe they drink beyond a healthy level were
more likely to accept that a message concerning binge drinking applied to them.
This data set indicates that individuals who are very dissonant in their alcohol use
are more willing to consider messages concerning binge drinking as being
applicable to themselves.
Binge drinking and accepting the message. Research question three asked,
“Will dissonant alcohol users be more likely to accept the message than consonant
alcohol users, when viewing a message concerning binge drinking?” To answer
60 this, a one-way ANOVA was used to test the differences among responses to the
statement “I believe the information is accurate” between very dissonant, dissonant
and consonant alcohol users. The responses varied significantly between the
groups, F (2, 214) =3.504, p = .032. Scheffe post-hoc comparisons of the three
groups indicate that very dissonant alcohol users (M =2.686) were less likely than
consonant alcohol users (M=2.994) to say that the message was accurate. Thus, the
lower score for users who were very dissonant indicates that they were not
accepting the message as much as consonant alcohol users. Comparisons between
the dissonant alcohol users (M=2.931) and the other two groups were not
statistically significant at p < .05. The mean scores are also indicated in table 14.
Table 14 – Differences in responses to “I believe the information is accurate”, after viewing the binge drinking video.
Binge Drinking and Accepting the Message
Very Dissonant Dissonant Consonant M = 2.686 M = 2.931 M = 2.994
Note: judgments were made on a 4-point scale (1 = strongly disagree, 4 = strongly agree)
The research question specifically sought a difference between individuals
who are consonant or dissonant, which the results did find at a level of statistical
significance. Thus, the research does tell us that there is a difference between
individuals who are very dissonant, and individuals who are consonant concerning
their alcohol use. Specifically, very dissonant alcohol users are less likely than
consonant users to accept the message as accurate when viewing a message
pertaining to binge drinking.
61
Binge drinking and behavioral changes. Research question four asked, “Will
dissonant alcohol users be more likely to make behavioral changes than consonant
alcohol users, when viewing a message concerning binge drinking?” To answer
this, a one-way ANOVA was used to test the differences among responses to the
statement “I am likely to change my behaviors because of this information” between
very dissonant, dissonant and consonant alcohol users. The differences between the
groups were not statistically significant F (2, 213) =1.049, p = .352. While the
differences are not significant, the means scores are noteworthy. Individuals who
were consonant (M = 1.915) were most likely to report that they would change their
behaviors after viewing the message. Dissonant users (M = 1.793) were more likely
than very dissonant users (M = 1.743) when indicating an intention to change their
behaviors after viewing a message concerning binge drinking. The mean scores are
also reported on table 15.
Table 15 – Differences in responses to “I am likely to change my behaviors because of this information”, after viewing the binge drinking video.
Binge Drinking and Behavioral Changes
Very Dissonant Dissonant Consonant M = 1.743 M = 1.793 M = 1.915
Note: judgments were made on a 4-point scale (1 = strongly disagree, 4 = strongly agree)
Research question four specifically asked if a difference would be found
between consonant and dissonant users intentions to change their behaviors after
viewing a message concerning binge drinking. Since the results are statistically
insignificant, the answer to the research question must be no, a difference cannot be
62 claimed. However, the results for each group are all low, indicating a lack of
effectiveness for the message shown. In each group, the mean score falls below a
2.0, which is a response of “disagree” when asked if the information presented will
likely cause them to change their behaviors. This may indicate that among all
groups, their personal drinking habits are resistant to change after viewing a
message concerning binge drinking.
Drunk driving and attack the messenger. Research question five asked,
“Will dissonant alcohol users be more likely to attack the messenger than consonant
alcohol users, when viewing a message concerning drunk driving?” To answer this,
a one-way ANOVA was used to test the differences among responses to the
statement “The creator of this video was credible” between very dissonant,
dissonant and consonant alcohol users. The differences between the groups were
not statistically significant, F (2, 214) =0.298, p = .743. However, the results are
also not practically significant, as the differences among the means scores are
minimal. In fact, individuals who were very dissonant (M = 3.057) almost equal to
individuals who were consonant alcohol users (M = 3.057). Individuals who were
dissonant (M = 2.931) produced results that were slightly below the other groups.
The mean scores are also reported on table 16.
63
Table 16 – Differences in responses to “The creator of this video was credible”, after viewing the drunk driving video.
Drunk Driving and Attack the Messenger
Very Dissonant Dissonant Consonant M = 3.057 M = 2.931 M = 3.026
Note: judgments were made on a 4-point scale (1 = strongly disagree, 4 = strongly agree)
Research question five specifically asked if a difference would be found
between consonant and dissonant users use of attacking the messenger after viewing
a video concerning drunk driving. Since the results are statistically insignificant,
the answer to the research question must be no, a difference cannot be claimed.
Additionally, the results indicate that all three groups were similar in their level of
accepting the creator of the video as credible. It is important to note that this was
the only video shown that was produced professionally, having been created by the
Ad Council.
Drunk driving and rationalization. Research question six asked, “Will
dissonant alcohol users be more likely to rationalize than consonant alcohol users,
when viewing a message concerning drunk driving?” To answer this, a one-way
ANOVA was used to test the differences among responses to the statement “the
information presented applies to me” between very dissonant, dissonant and
consonant alcohol users. The differences between the groups approached, but were
not statistically significant, F (2, 214) =3.018, p = .051. Individuals who were
consonant (M = 2.364) were least likely to report that the information presented
applies to them. Additionally, dissonant users (M = 2.448) were less likely than
64 very dissonant users (M = 2.771) to indicate that the message pertaining to drunk
driving was applicable to them. The mean scores are also reported on table 17.
Table 17 – Differences in responses to “The information presented applies to me”, after viewing the drunk driving video.
Drunk Driving and Rationalization
Very Dissonant Dissonant Consonant M = 2.771 M = 2.448 2.364
Note: judgments were made on a 4-point scale (1 = strongly disagree, 4 = strongly agree)
Research question six specifically asked if a difference would be found
between consonant and dissonant users attempts at rationalization after viewing a
video concerning drunk driving. Since the results are statistically insignificant, the
answer to the research question must be no, a difference cannot be claimed.
However, it is important to consider that rationalization does not appear to be in use
as a dissonance-reducing strategy. Instead, this data set suggests that individuals in
a state of dissonance are willing to accept that the information applies to them.
Drunk driving and accepting the message. Research question seven asked,
“Will dissonant alcohol users be more likely to accept the message than consonant
alcohol users, when viewing a message concerning drunk driving?” To answer this,
a one-way ANOVA was used to test the differences among responses to the
statement “I believe the information is accurate” between very dissonant, dissonant
and consonant alcohol users. The differences between the groups were not
statistically significant, F (2, 215) = 0.408, p = .666. Not only does the data lack
statistical significance, but it also lacks practical significance, as the difference
65 between the groups is minimal. Individuals who were consonant (M = 3.162) were
only slightly more likely than individuals who were dissonant (M = 3.103) or very
dissonant (M = 3.057) to accept the message as accurate. The mean scores are also
reported on table 18.
Table 18 – Differences in responses to “I believe the information is accurate”, after viewing the drunk driving video.
Drunk Driving and Accepting the Message
Very Dissonant Dissonant Consonant M = 3.057 M = 3.103 3.162
Note: judgments were made on a 4-point scale (1 = strongly disagree, 4 = strongly agree)
Research question seven specifically asked if a difference would be found
between consonant and dissonant users in their acceptance of the message, after
viewing a video concerning drunk driving. Since the results are statistically
insignificant, the answer to the research question must be no, a difference cannot be
claimed. Additionally, the statistically insignificant difference that does exist is
minimal, suggesting that all participants were almost equally as likely to accept the
drunk driving message as accurate.
Drunk driving and behavioral changes. Research question eight asked, “Will
dissonant alcohol users be more likely to change their behavior than consonant
alcohol users, when viewing a message concerning drunk driving?” To answer this,
a one-way ANOVA was used to test the differences among responses to the
statement “I am likely to change my behaviors because of this information ”
between very dissonant, dissonant and consonant alcohol users. The differences
66 between the groups were not statistically significant, F (2, 216) = 0.480, p = .619.
Not only does the data lack statistical significance, but it also lacks practical
significance, as the difference between the groups is small. Individuals who were
consonant (M = 2.039) were only slightly more likely than individuals who were
very dissonant (M = 2.000) to intend to change their behavior, and slightly less
likely than individuals who were dissonant (M = 2.172). The mean scores are also
reported on table 19.
Table 19 – Differences in responses to “I am likely to change my behaviors because of this information”, after viewing the drunk driving video.
Drunk Driving and Behavioral Changes
Very Dissonant Dissonant Consonant M = 2.000 M = 2.172 M = 2.039
Note: judgments were made on a 4-point scale (1 = strongly disagree, 4 = strongly agree)
Research question eight specifically asked if a difference would be found
between consonant and dissonant users in their intention to change their behaviors
after viewing a video concerning drunk driving. Since the results are statistically
insignificant, the answer to the research question must be no, a difference cannot be
claimed. Additionally, the statistically insignificant difference that does exist is
minimal, suggesting that all participants were almost equally as likely to intend to
make behavioral changes.
Date rape and attack the messenger. Research question nine asked, “Will
dissonant alcohol users be more likely to attack the messenger than consonant
alcohol users, when viewing a message concerning date rape?” To answer this, a
67 one-way ANOVA was used to test the differences among responses to the statement
“The creator of this video was credible” between very dissonant, dissonant and
consonant alcohol users. The differences between the groups were not statistically
significant, F (2, 213) = 0.222, p = 0.801. Not only does the data lack statistical
significance, but it also lacks practical significance, as the difference between the
groups is small. Individuals who were consonant (M = 2.667) were only slightly
more likely than individuals who were very dissonant (M = 2.629) to intend to
change their behavior, and slightly less likely than individuals who were dissonant
(M = 2.750). The mean scores are also reported on table 20.
Table 20 – Differences in responses to “The creator of this video was credible”, after viewing the date rape video.
Date Rape and Attack the Messenger
Very Dissonant Dissonant Consonant M = 2.629 M = 2.750 M = 2.667
Note: judgments were made on a 4-point scale (1 = strongly disagree, 4 = strongly agree)
Research question nine specifically asked if a difference would be found
between consonant and dissonant users in frequency that they would attack the
messenger, after viewing a video concerning date rape. Since the results are
statistically insignificant, the answer to the research question must be no, a
difference cannot be claimed. Additionally, the statistically insignificant difference
that does exist is minimal, suggesting that all participants were almost equally as
likely to attack the messenger that created a video regarding date rape.
68
Date rape and rationalization. Research question ten asked, “Will dissonant
alcohol users be more likely to rationalize than consonant alcohol users, when
viewing a message concerning date rape?” To answer this, a one-way ANOVA was
used to test the differences among responses to the statement “The information
presented applies to me” between very dissonant, dissonant and consonant alcohol
users. The differences between the groups was statistically significant, F (2, 214) =
3.381, p =0.036. The results indicate that the middle group, those who are dissonant
exhibited the most rationalization, by negatively responding to the statement.
Specifically, dissonant users (M = 1.621) were drastically more likely to rationalize
than consonant users (M = 2.092) or very dissonant users (M = 2.143). The mean
scores are also reported on table 21.
Table 21 – Differences in responses to “The information presented applies to me,” after viewing the date rape video.
Date Rape and Rationalization
Very Dissonant Dissonant Consonant M = 2.092 M = 1.621 M = 2.143
Note: judgments were made on a 4-point scale (1 = strongly disagree, 4 = strongly agree)
Research question ten specifically asked if a difference would be found
between consonant and dissonant users in frequency that they would rationalize
after viewing a video concerning date rape. The results provide intriguing results,
as the group that is simply dissonant is more likely than all others to rationalize
their behavior. The difference between users who are very dissonant and consonant
are nearly equal, indicating those groups are similarly willing to claim that the
69 information applied to them. This provides strong evidence that individuals use
rationalization to resolve dissonance pertaining to their alcohol use if there is a
moderate difference between their beliefs and behaviors.
Date rape and accept the message. Research question 11 asked, “Will
dissonant alcohol users be more likely to accept the message than consonant alcohol
users, when viewing a message concerning date rape?” To answer this, a one-way
ANOVA was used to test the differences among responses to the statement “I
believe the information is accurate” between very dissonant, dissonant and
consonant alcohol users. The differences between the groups were not statistically
significant, F (2, 215) = 1.413, p = 0.246. Not only does the data lack statistical
significance, but it also lacks practical significance, as the difference between the
groups is small. Individuals who were consonant (M = 3.114) were only slightly
less likely than individuals who were very dissonant (M = 3.253) to intend to accept
the message, and slightly more likely than individuals who were dissonant (M =
3.103). The mean scores are also reported on table 22.
Table 22 – Differences in responses to “I believe the information is accurate”, after viewing the date rape video. Date Rape and Accept the Message
Very Dissonant Dissonant Consonant
M = 3.114 M = 3.103 M = 3.253 Note: judgments were made on a 4-point scale (1 = strongly disagree, 4 = strongly agree)
Research question 11 specifically asked if a difference would be found
between consonant and dissonant users in frequency that they would accept the
70 message after viewing a video concerning date rape. Since the results are
statistically insignificant, the answer to the research question must be no, a
difference cannot be claimed. Additionally, the statistically insignificant difference
that does exist is minimal, suggesting that all participants were almost equally as
likely to accept the message regarding date rape.
Date rape and behavioral changes. Research question nine asked, “Will
dissonant alcohol users be more likely to make behavioral changes than consonant
alcohol users, when viewing a message concerning date rape?” To answer this, a
one-way ANOVA was used to test the differences among responses to the statement
“I am likely to change my behaviors because of this information” between very
dissonant, dissonant and consonant alcohol users. The differences between the
groups were not statistically significant, F (2, 214) = 1.248, p = 0.289. Not only
does the data lack statistical significance, but it also lacks practical significance, as
the difference between the groups is small. Individuals who were consonant (M =
2.078) were only slightly more likely than individuals who were very dissonant (M
= 2.000) and individuals who were dissonant (M = 1.828) to intend to change their
behavior. The mean scores are also reported on table 23.
Table 23 – Differences in responses to “I am likely to change my behaviors because of this information,” after viewing the date rape video.
Date Rape and Behavioral Changes
Very Dissonant Dissonant Consonant M = 2.000 M = 1.828 M = 2.078
Note: judgments were made on a 4-point scale (1 = strongly disagree, 4 = strongly agree)
71
Research question 12 specifically asked if a difference would be found
between consonant and dissonant users in frequency in stating that they would make
behavioral changes after viewing a video concerning date rape. Since the results are
statistically insignificant, the answer to the research question must be no, a
difference cannot be claimed. Additionally, the statistically insignificant difference
that does exist is minimal, suggesting that all participants were almost equally as
likely to make behavioral changes after viewing a video regarding date rape.
Discussion
The twelve research questions posed can be seen in a matrix, as each
question examined one of four dissonance-reducing strategies after viewing one of
three videos of alcohol awareness. The results achieved statistical significance in
four areas, and approached significance (p = .051) in one additional area. Some of
the significant results indicate that cognitive dissonance is at work, while others
suggest that individuals are not utilizing dissonance-reducing strategies. Yet, the
data from this study provides insights into how college students are responding to
message concerning their alcohol use.
Conclusions
Rationalization. The results indicate that students rejected an opportunity to
invoke rationalization after viewing both the drunk driving and binge drinking
video. The participants were asked whether the information presented was
applicable to them, and those who would utilize rationalization could be expected to
say it did not. However, the results indicate that participants were more likely to
72 claim the video applied to them when their level of dissonance was larger. Thus,
consonant users were least likely to claim that the information applied to them,
which is what should be expected. Thus, with statistical significance being
achieved, students did not invoke rationalization after viewing messages concerning
binge drinking and drunk driving.
However, the results do indicate rationalization was at work when viewing
messages concerning date rape. Individuals who were very dissonant and consonant
were similar in the frequency to which they claimed the message applied to them.
However, individuals who were in the middle group, which can be seen as those
who are moderately dissonant reported a score much lower than the rest of their
peers. Specifically, individuals who had a moderate difference between their beliefs
about alcohol consumption and their actual consumption behaviors were more likely
to take advantage of an opportunity to rationalize their behavior. This information
provides an opening for future researchers, who can gain a fuller understanding of
this information by offering multiple forms of rationalization for participants.
It is important for practitioners of alcohol education to note these results.
Students who have larger amounts of dissonance do report that alcohol awareness
messages apply to them more than their peers, with the exception of date rape
messages. When crafting messages concerning drunk driving and binge drinking,
practitioners can feel confident that members of their target population are not
dismissing the messages through rationalization. It is also important to note that
members of their target population may be dismissing messages of date rape through
73 rationalization. When the time an individual will watch or read a message
concerning alcohol is limited, this can help practitioners not spend precious time
trying to overcome an objection that is not there for college students.
Binge drinking. Students reported the most significant results relating to
binge drinking. Specifically, statistical significance was achieved when comparing
responses to the binge drinking video with accepting the message, attacking the
messenger and rationalization. In each of these cases, the results can offer future
researchers and practitioners a better understanding of how college students are
responding to messages that may challenge their existing behaviors.
As discussed earlier, it does not appear that college students are utilizing
rationalization to reduce dissonance caused by a video about binge drinking. Those
who have the largest amount of dissonance are those who are most likely to say the
message is applicable to them, which is what one would expect without
rationalization. A potential explanation is that the behaviors surrounding binge
drinking are too blatant to rationalize. It might be more challenging to deny to
themselves that they drink more than five drinks in one night than compared to other
behaviors, such as not practicing safe habits at parties. However, practitioners can
be confident that messages concerning binge drinking will not be dismissed due to
rationalization.
Individuals with the highest levels of dissonance are also the least likely to
accept the message as accurate. This is a predicted dissonance-reducing strategy
that is supported by the present research. Specifically, individuals who are
74 consonant and dissonant are similar in their responses to “I believe the information
is accurate.” However, participants with the highest levels of dissonance were much
less likely to accept the message as accurate. This is important for practitioners of
alcohol awareness messages to be aware of, as the population that may need the
information the most is most likely to reject the accuracy of a message concerning
binge drinking.
It is also clear that individuals with the highest levels of dissonance are most
likely to attack the messenger. This is another predicted dissonance-reducing
strategy that is supported by the present research. Specifically, individuals who are
consonant and dissonant are similar in their responses to “the creator of this video
was credible.” Again, the individuals who are most dissonant are most likely to
report that the messenger is not credible. This is also important for practitioners of
alcohol awareness messages, as the population that may need the information the
most is the group most likely to attack the messenger in order to reject the
information.
This information combines to provide support that when viewing messages
of binge drinking, college students are invoking attack the messenger that allows
them to refuse to accept the message in order to resolve the dissonance created.
Practitioners are likely to be attempting to alter student behaviors with their
messages. When their target population is utilizing these dissonance-reducing
strategies, it becomes unlikely that they will alter their behaviors as a result. Thus,
75 although time and space is limited in alcohol awareness messages, it is appropriate
to attempt to establish credibility of both the message and the messenger.
Behavioral changes. For all three videos, students were unlikely to report
that they intended to make behavioral changes after viewing the messages. The
results are even more striking after viewing a video regarding binge drinking, which
is a behavior that the data suggests the students are defensive of. Although each of
these videos were brief, none of them produced results of students overall indicating
an intention to alter their behaviors. This information can be helpful to practitioners
who are considering continuing the current messages, or experimenting with new
ones. This information can also be helpful to future researchers, who can help
explain this phenomenon.
Limitations
There are three significant limitations to be discussed. Each of these
limitations should be considered with the conclusions, as they represent potential
confounding variables, delivery errors or research design flaws. Future researchers
who may benefit from the present research project will need to consider the
following flags when designing follow-up studies.
Abstainers. A flaw in the research design was a lack of clear answers for
individuals who decide to abstain from alcohol completely. An improvement to the
research design would have been to specifically ask participants if they considered
themselves to be abstaining from alcohol. Since this was not asked, it was
impossible to remove this group from data analysis, as there were no clear
76 delineations between individuals who never use alcohol and those who use alcohol
infrequently. Future research designs should explicitly seek out individuals who
consider themselves to be abstainers.
Video messages. The pivotal piece of the current project was to determine
how people’s status as consonant or dissonant would impact their interpretation of
various messages about alcohol use. The researcher determined that the three
videos selected would be best able to effectively garner the existence of reactions
predicted by Cognitive Dissonance Theory. However, each video had drawbacks to
be considered. First, the drunk driving video was designed to be humorous, and in
several classes drew laughter from the students, which may have dulled the
seriousness of the message. The binge drinking video was produced by a college
student, as the description published with the video explains that it was for a college
project. Additionally, the video focused on alcohol poisoning as well. The focus on
alcohol poisoning is logical, considering its root cause is binge drinking. However,
taking both the overlap with alcohol poisoning, as well as the light humor included
in this video, it is also possible that the information was not as powerful as it could
have been. Finally, the date rape video that was shown was selected because it was
among the least offensive, but not the most powerful, videos available. This was
done in specific response to concerns by the governing body that approved the
research design. However, by softening the message, it may have also softened the
reaction.
77
Survey design. The survey tool utilized produced limitations in the data
analysis. Specifically, participants were classified as dissonant or consonant based
on the difference between how much alcohol they reported to consume in a week
and the amount of alcohol they thought would be healthy to consume in a week. A
more thorough design could have dug deeper to create a more comprehensive
understanding of an individual’s dissonance. It is possible that students feel their
weekly level of alcohol consumption is healthy, but they are dissonant about the fact
that they regularly drive under the influence of alcohol, or they consume too much
in one sitting. Not only are these examples of dissonance that were not measured in
the current project, but they are unique situations of dissonance, which could
produce different dissonance-reducing strategies than those found in the present
study.
Final Comments
After reviewing the limitations, the results found in the present study remain
illuminating and useful for both practitioners and future researchers. We can say
that college students respond to date rape videos with a form of rationalization, by
claiming that the video does not apply to them. The data also shows that college
students reject the accuracy of messages concerning both drunk driving and date
rape by attacking the messenger. Practitioners can utilize this information to craft
messages that are more likely to overcome those objections. Future researchers can
utilize this information to answer continuing questions, such as why rationalization
is a strategy utilized for date rape, while attack the messenger is utilized for binge
78 drinking and drunk driving. However, as a result of the present study, it can be said
that Festinger’s (1957) Cognitive Dissonance Theory can be used to explain,
predict, and ultimately control the alcohol consumption behaviors of college
students.
79
References.
American College Health Association (2004, June). National college health
Assessment web summary. Retrieved December 10, 2004, from
http://www.acha.org/projects_programs/ncha_sampledata_public.cfm
Aronson, E. (1968). Dissonance theory: Progress and problems. In R. P. Abelson,
E. Aronson, W.J. McGuire, T.M. Newcomb, M.J. Rosenberg & P.H.
Tannenbaum (Eds.) Theories of cognitive consistency: A sourcebook (pp. 5-
27). Chicago: Rand McNally.
Aronson, E. (1999). Dissonance, hypocrisy, and the self-consept. In E. Harmon-
Jones & J. Mills (Eds.), Cognitive dissonance: Progress on a pivotal theory
in social psychology (pp. 103-126). Washington, DC: American
Psychological Association.
Aronson, E., Cohen, G. & Nail, P. (1999). Self-affirmation theory: An update and
appraisal. In E. Harmon-Jones & J. Mills (Eds.), Cognitive dissonance:
Progress on a pivotal theory in social psychology (pp. 127-148).
Washington, DC: American Psychological Association.
Aronson, E. & Mills, J. (1959). The effect of severity of initiation on liking for a
group. Journal of Abnormal and Social Psychology, 59, 177-181.
Aronson, E., Turner, J. & Carlsmith, J. (1963). Communicator credibility and
communication discrepancy as determinants of opinion change. Journal of
Abnormal and Social Psychology, 67, 31-36.
80
Barnett, L., Far, J., Mauss, A. & Miller, J. (1996). Changing perceptions of peer
norms as a drinking reduction program for college students. Journal of
Alcohol and Drug Education, 41, 39-62.
Beauvois, J. & Joule, R. (1996). A radical dissonance theory. London: Taylor and
Francis.
Beauvois, J. & Joule, R. (1999). A radical point of view on dissonance theory. In e.
Harmon-Jones & J. Mills (Eds.), Cognitive dissonance: Progress on a pivotal
theory in social psychology (pp 43-70). Washington, DC: American
Psychological Association.
Bem, D. & McConnell, H. (1970). Testing the self-perception explanation of
dissonance phenomena: On the salience of premanipulation attitudes.
Journal of Personality and Social Psychology, 14, 23-31.
Bem, D. (1972). Self-perception theory. In L. Berkowitz (Ed.), Advances in
experimental social psychology (Vol. 6, pp. 1-62). New York: Academic
Press.
Bonomo, Y., Coffey, C., Wolfe, R., Lynskey, M., Bowes, G. & Patton, G. (2001).
Adverse outcomes of alcohol use in adolescents. Addiction, 96, 1485-1496.
Brehm, J. (1956). Postdecision changes in the desirability of alternatives. Journal
of abnormal and Social Psychology, 52, 384-389.
Brehm, J., Cohen, A. & Sears, R. (1960). Persistence of post-choice dissonance
reduction effects. Unpublished study.
81
Brower, A., Rothschild, M. & Saur, M. (2000). Using institutional data as input to
decision making about student drinking. Research note for JACH (pp. 1-13).
Cassel, R. & Chow, P. (2000). The Cognitive Dissonance Test (DISS). Chula
Vista, California: Project Innovation.
Centers for Disease Control and Prevention (2004). Surveillance Summaries.
Morbidity and Mortality Weekly Report, 53 (No. SS-2).
Chaloupka, F. & Wechsler, H. (1996). Binge drinking in college: The impact of
price, availability, and alcohol control policies. Contemporary Economic
Policy 14, 112-124.
Chow, P. & Thompson, I. (2003). The personal development test and the cognitive
dissonance test: A comparison. Education, 123, 733-739.
Converse, P. (1970). Attitudes and non-attitudes: Continuation of a dialogue. In E.
R. Tufte (Ed.), The quantitative analysis of social problems (168-189).
Reading, MA: Addison-Wesley.
Crown, L. (2000). Preliminary summary of UW-Madison and national college
alcohol study findings. University of Wisconsin, Madison.
Dawley, H., Fleischer, B. & Dawley, L. (1985). Attitudes towards smoking and
smoking rate: Implications for smoking discouragement. International
Journal of the Addictions, 20, 483-488.
Deshpande, S. (2004). Applying social marketing concepts to promote responsible
82
alcohol use among American college students. Unpublished doctoral
dissertation. University of Wisconsin, Madison.
Dietrich, D. (1990). The Role of the Self in Dissonance-Motivated Behavior.
Unpublished doctoral dissertation. University of Wisconsin – Madison.
Douglas, K., Collins, J., Warren, C., Kann, L., Gold, R., Clayton, S., et al. (1997).
Results from the 1995 National College Risk Behavior Survey. Journal of
American College Health, 46, 55-66.
Eiser, J. & Harding, C. (1983). Smoking, seat belt use and perception of health
risks. Addictive Behaviors, 8, 75-78.
Ehrlich, D., Guttman, I., Schonbach, P. & Mills, J. (1957). Post-decision exposure
to relevant information. Journal of abnormal and Social Psychology, 54, 98-
102.
Fazio, R., Zanna, M. & Cooper, J. (1977). Dissonance and self-perception: An
integrative view of each theory’s proper domain of application. Journal of
Experimental Social Psychology, 13, 464-479.
Feather, N. (1962). Cigarette smoking and lung cancer: A study of cognitive
dissonance. Australian journal of Psychology, 14, 55-64.
Fennell, R. (1997). Health behaviors of students attending historically Black
colleges and universities: Results from the National College Health Risk
Behavior Survey. Journal of American College Health, 46, 109-117.
Festinger, L. (1957). A theory of cognitive dissonance. Evanston, IL: Row,
Peterson.
83 Festinger, L. (1964). Conflict, Decision and Dissonance. Stanford, CA: Stanford
University Press.
Festinger, L. & Carlsmith, J. (1959). Cognitive consequences of forced compliance.
Journal of Abnormal and Social Psychology, 58, 203-211.
Gibbons, F., Eggleston, T. & Benthin, A. (1997). Cognitive reactions to smoking
relapse: The reciprocal relation between dissonance and self-esteem. Journal
of Personality and Social Psychology, 72, 184-195.
Graham, K., Bernards, S., Osgood, D. & Wells, S. (2006). Bad nights or bad bars?
Multi-level analysis of environmental predictors of aggression in late-night
large-capacity bars and clubs. Addiction, 101, 1569-1580.
Grant, B., Dawson, D., Stinson, F., Chou, S., Dufour, M. & Pickering, R. (2004).
The 12-month prevalence and trends in DSM-IV alcohol abuse and
dependence: United States, 1991-1992 and 2001-2002. Drug and Alcohol
Dependence, 74, 223-234.
Glindemann, K., Geller, E. & Ludwig, T. (1996). Behavioral intentions and blood
alcohol concentration: A relationship for prevention and intervention.
Journal of alcohol and Drug Education, 41, 120-134.
Greenberg, J. & Musham, C. (1981). Avoiding and seeking self-focused attention.
Journal of Research in Personality, 15, 191-200.
Haines, M. & Spear, A. (1996). Changing the percption of the norm: A strategy to
decrease binge drinking among college students. Journal of American
College Health, 45, 134-140.
84 Harmon-Jones, E. & Harmon Jones, C. (2007). Cognitive dissonance theory after
50 years of development. Zeitschrift fur Socialpsychologie, 38, 7-16.
Hingson, R., Heeren, T., Winter, M. & Wechsler, H. (2005). Magnitude of alcohol-
related moratlity and morbidity among U.S. college students ages 18-24:
Changes from 1998 to 2001. Annual Review of Public Health, 26, 259-279.
Hingson, R., Heeren, T., Zakocs, R., Kopstein, A. & Wechsler, H. (2002).
Magnitude of alcohol-related moratlity and morbidity among U.S. college
students ages 18-24. Journal of Studies on Alcohol, 63, 136-144.
Hull, J., Levenson, R., Young, R. & Sher, K. (1983). The self-awareness-reducing
effects of alcohol consumption. Journal of Personality and Social
Psychology, 44, 461-473.
Janis, I. (1959). Motivational factors in the resolution of decisional conflicts. In M.
Jones (Ed.), Nebraska symposium on motivation, 8. Lincoln, NE: University
of Nebraska Press.
Jones, E. (1985). Major developments in social psychology during the past five
decades. In G. Lindzey & E. Aronson (Eds.) The handbook of social
psychology (3rd ed., 47-107). New York: Random House.
Kidd, R. & Berkowitz, L. (1976). Effect of dissonance arousal on helpfulness.
Journal of Personality and Social Psychology, 33, 613-622.
Knight, J., Wechsler, H., Kuo, M., Seibring, M., Weitzman, E. & Schuckit, M.
(2002). Alcohol abuse and dependenc eamong U.S. college students.
Journal of Studies on Alcohol, 63, 263-270.
85
Larimer, M. & Crone, J. (2002). Identification, prevention and treatment: A review
of individual-focused strategies to reduce problematic alcohol consumption
by college students. Journal of Studies on Alcohol, Supplement 14, 148-163.
Lederman, L. & Stewart, L. (1998). Addressing the culture of college drinking
through correcting misperceptions: Using experiential learning theory and
Gilligan’s work. Communication and Health Issues Research Series: Report
#4. New Brunswick, NJ: Center for Communication and Health Issues,
Rutgers University.
Lederman, L. & Stewart, L. (2005). Changing the culture of college drinking: A
socially situated health communication campaign. Cresskill, NJ: Hampton
Press.
Lederman, L., Stewart, L., Goodhart, F. & Laitman, L. (2003). A case against
“binge” as the term of choice: Convincing college students to personalize
messages about dangerous drinking. Journal of Health Communication, 8,
79-91.
Lederman, L., Stewart, L. & Russ, T. (2007). Addressing college drinking through
curriculum infusion: A study of the use of experience-based learning in the
communication classroom. Communication Education, 56, 4, 476-494.
Leonard, K., Quigley, B. & Collins, R. (2003). Drinking, personality and bar
86
environmental characteristics as predictors of involvement in barroom
aggression. Addictive Behaviors, 28, 1681-1700.
Lindsay, V. (2006). Factors that predict freshmen college students’ preference to
drink alcohol. Journal of Alcohol and Drug Education, 50, 7-19.
Loken, B. (1982). Heavy smokers’, light smokers’, and nonsmokers’ beliefs about
cigarette smoking. Journal of Applied Psychology, 67, 616-622.
Lord, C. (1992). Was cognitive dissonance theory a mistake? Psychological
Inquiry, 3, 339-342.
Lu, K. (2005). Media and college binge-drinking: Direct and indirect media
influences on drinking norm. Unpublished doctoral dissertation. University
of Wisconsin, Madison.
Maggs, J. (1997). Alcohol use and binge drinking as goal-directed action during the
transition to post-secondary education, in Health Risks and Developmental
Transitions During Adolescence, Schulenberg, J., Maggs, J. & Hurrelmann,
K. (Eds.) 345-371. Cambridge University Press, New York.
Makela, K. (1997). Drinking, the majority fallacy, cognitive dissonance and social
pressure. Addiction, 92, 729-736.
Markowitz, L. (2000). Smokers’ perceived self-exemption from health risks. Psi
Chi Journal of Undergraduate Research, 5, 119-124.
Maslow, A. (1954). Motivation and Personality. New York: Harper and Brothers.
McKennell, A. & Thomas, R. (1967). Adults’ and Adolescents’ Smoking Habits and
87
Attitudes (Government Social Survey No. 353 B). London: HMSO.
McMaster, C. & Lee, C. (1991). Cognitive dissonance in tobacco smokers.
Addictive Behaviors, 16, 349-353.
Mills, J. (1999). Improving the 1957 version of dissonance theory. In E. Harmon-
Jones & J. Mills (Eds.), Cognitive dissonance: Progress on a pivotal theory
in social psychology (pp. 25-42). Washington, DC: American Psychological
Association.
O’Malley, P. & Johnston, L. (2002). Epidemiology of alcohol and other drug use
among American college students. Journal of Studies on Alcohol, 14, 23-29.
Oshikawa, S. (1969). Can cognitive dissonance theory explain consumer behavior?
Journal of Marketing, 33, 44-19.
Paavola, M., Vartiainen, E. & Haukkala, A. (2004). Smoking, alcohol use and
physical activity: A 13-year longitudinal study ranging from adolescence into
adulthood. Journal of Adolescent Health, 35, 238-244.
Perkins, H. (2002). Surveying the damage: areview of research on consequences of
alcohol misuse in college populations. Journal of Studies on Alcohol, 14, 91-
100.
Pervin, L. & Yatko, R. (1965). Cigarette smoking and alternative methods of
reducing dissonance. Journal of Personality and Social Psychology, 2, 30-
36.
Presley, C. & Cashin, J. (1996). Alcohol and drugs on America’s college campuses:
88
Use, consequences, and perceptions of the campus environment. Core
Institute Student Health Program, IV, 1992-1994. Core Institute, Southern
Illinois University, Carbondale, IL.
Presley, C., Meilman, P. & Leichliter, J. (2002). College factors that influence
drinking. Journal of Studies on Alcohol, 14, 82-90.
Rabow, J. & Duncan-Schill, M. (1995). Drinking among college students. Journal
of Alcohol and Drug Education, 40, 52-64.
Rossow, I. (1996). Alcohol-related violence: the impact of drinking patterns and
drinking context. Addiction, 91, 1651-1661.
Rothschild, M. (1999). Carrots, sticks, and promises: A conceptual framework for
the management of public health and social issue behaviors. Journal of
Marketing, 63, 24-37.
Sakai, H. (1999). A multiplicative power function model of cognitive dissonance:
Toward an integrated theory of cognition, emotion, and behavior after leon
Festinger. In E. Harmon-Jones & J. Mills (Eds.), Cognitive dissonance:
Perspectives on a pivotal theory. Washington, DC: American Psychological
Association.
Sarup, G. (1981). Role playing, issue importance, and attitude change. Social
Behavior and Personality, 9, 191-202.
Schultz, T. & Lepper, M. (1999). Computer simulation of cognitive dissonance
89
reduction. In E. Harmon-Jones & J. Mills (Ed.), Cognitive dissonance:
Progress on a pivotal theory in social psychology (pp. 235-265().
Washington, DC: American Psychological Association.
Simon, L., Greenberg, J. & Brehm, J. (1995). Trivialization: The forgotten mode of
dissonance reduction. Journal of Personality and Social psychology, 68,
247-260.
Steele, C. (1988). The psychology of self-affirmation: Sustaining the integrity of
the self. In L. Berkowitz (Ed.), Advances in experimental social psychology
(Vol. 21, pp. 261-302). San Diego, CA: Academic Press.
Steele, C. & Liu, T. (1983). Dissonance processes as self-affirmation. Journal of
Personality and social Psychology, 45, 5-19.
Steele, C., Southwick, L. & Critchlow, B. (1981). Dissonance and alcohol:
Drinking your troubles away. Journal of Personality and School Psychology,
41, 831-846.
Stice, E. (1992). The similarities between cognitive dissonance and guilt:
Confession as a relief of dissonance. Current Psychology, 11, 69-77.
Swahn, M. & Donovan, J. (2005). Predictors of fighting attributed to alcohol use
among adolescent drinkers. Addictive Behaviors, 30, 1317-1334.
Task Force of the National Advisory Council on Alcohol abuse and Alcoholism.
90
(2002). A Call to Action: Changing the Culture of Drinking at U.S.
Colleges: Final Report of the Task Force on College Drinking. (NIH
Publication No. 02-5010). Bethesda, MD: National Institute of Health.
Thombs, D., Wolcott, B. & Farkash, L. (1997). Social context, perceived norms and
drinking behavior in young people. Journal of Substance Abuse, 9, 257-267.
Toomey, T. & Wagenaar, A. (1999). Policy options for prevention: The case of
alcohol. Journal of Public Health Policy, 20, 192-213.
U.S. Department of Health and Human Services [USDHHS]. (1989). Reducing the
health consequences of smoking: 25 years of progress. A report of the
Surgeon General. (DHHS Publication No. CDC 89-8411). Washington, DC:
U.S. Government Printing Office.
Viscussi, K. (1992). Smoking: Making the risky decision. New York: Oxford
University Press.
Wagenaar, A. & Tooney, T. (2002). Effects of minimum drinking age laws: Review
and analysis of the literature from 1960 to 2000. Journal of Studies on
Alcohol, Supplement 14, 206-225.
Wechsler, H., Davenport, A., Dowdall, G., Moeykens, B. & Castillo, S. (1994).
Health and behavioral consequences of binge drinking in college. A national
survey of students at 140 campuses. Journal of the American Medical
Association, 272, 1672-1677.
Wechsler, H. & Isaac, N. (1992). “Binge” drinkers at Massachusetts colleges:
91
Prevalence, drinking style, time trends, and associated problems. Journal of
the American Medi cal Association, 267, 2929-2931.
Wechsler, H., Lee, J. Kuo, M. & Lee, H. (2000). College binge drinking in the
1990s: A continuing problem: Results of the Harvard School of Public
Health 1999 College Alcohol Study. Journal of American College Health,
48, 199-210.
Wechsler, H., Lee, J., Kuo, M., Seibring, M., Nelson, T. & Lee, H. (2002). Trends
in college binge drinking during a period of increased prevention efforts.
Journal of American College Health, 50, 203-217.
Wechsler, H., Lee, J., Nelson, T. & Kuo, M. (2002). Underage college students’
drinking behavior, access to alcohol, and the influence of deterrence policies:
Findings from the Harvard School of Public Health college alcohol study.
Journal of American college Health, 50, 223-236.
Wechsler, H., Molnar, B., Davenport, A. & Baer, J. (1999). College alcohol use: A
full or empty glass? Journal of American College Health, 47, 247-252.
Wechsler, H., Nelson, T. & Weitzman, E. (2000). From knowledge to action: How
Harvard’s college alcohol study can help your campus design a campaign
against student alcohol abuse. Change, 38-43.
Wechsler, H. & Wuerthrich, B. (2002). Dying to Drink: Confronting Binge
Drinking on College Campuses. Rodale, NY: St. Martins Press.
Weinstein, N. (1982). Unrealistic optimism about susceptibility to health problems.
Journal of Behavioral Medicine, 5, 441-460.
92 Weinstein, N. (1987). Unrealistic optimism about susceptibility to health problems:
Conclusions from a community-wide sample. Journal of behavioral
Medicine, 10, 481-500.
Wells, S. & Graham, K. (2003). Aggression involving alcohol: relationship to
drinking patterns and social context. Addiction, 98, 33-42.
Wood, P., Sher, K. & Bartholow, B. (2002). Alcohol use disorders and cognitive
abilities in young adulthood: A prospective estudy. Journal of Consulting
and Clinical Psychology, 70, 897-907.
Worden, J., Waller, J., Ashikayo, T. & Sweeney, R. (1980). Respiratory diseases in
Vermont: A population survey for planning a public education program.
Preventive Medicine, 9, 120-134.
Zanna, M. & Cooper, J. (1974). Dissonance and the pill: An attributional approach
to studying the arousal properties of dissonance. Journal of Personality and
Social Psychology, 29, 703-709.
APPENDIX A: Statement of Informed Consent The purpose of this research study is to examine your beliefs and opinions about your alcohol use. If you agree to participate in this survey, the survey will take approximately twenty minutes to complete. A series of short videos pertaining to alcohol use will be played. Please respond to each question by giving your most honest response. Participation in this study may cause psychological distress, however steps have been taken to minimize the impact and harm this may cause. Any participant who feels this distress may contact the University of Wisconsin – Whitewater Health and Counseling Center at (262) 472-1305. There are no other foreseeable risks associated with your participation in this study. It is anticipated that you may benefit from participation in today’s session by learning more about alcohol related issues. Your responses to this questionnaire are anonymous. Your names will not be requested, and no attempt will be made to connect you to the answers that you provide. These surveys will be used by the researcher only, for purposes of data analysis and report production. Your participation is entirely voluntary, and there will be no penalty or loss of benefits for opting to not participate. If you have questions regarding your participation in this study, please contact: Dr. S.A. Welch Assistant Professor Department of Communication University of Wisconsin – Whitewater welchs@uww.edu (262) 472-5722 OR Denise Ehlen IRB Administrator Office of Research and Sponsored Programs University of Wisconsin – Whitewater ehlend@uww.edu (262) 472-5214 I have read the informed consent form, and agree to participate in this study. ________________________________________ ______________________
Signature Date
APPENDIX B: ALCOHOL DISSONANCE SURVEY Please identify if you strongly agree, agree, disagree or strongly disagree to each of the following statements. SA A D SD 1 – The level of alcohol I drink per week is healthy. SA A D SD 2 – It is sometimes okay to drive under the
influence of alcohol. SA A D SD 3 – I am a responsible drinker. SA A D SD 4 – When I drink alcohol, I do so in moderation. SA A D SD 5 – I can recognize the signs of alcohol poisoning. SA A D SD 6 – It is possible that me, or one of my friends or I may
Have suffered from alcohol poisoning. SA A D SD 7 – My drinking has interfered with my academic or
personal life at least once. SA A D SD 8 – I am aware of the long-term health effects of
alcohol use. SA A D SD 9 – I have exhibited some of the signs of alcohol
dependence. SA A D SD 10 – I can identify some of the signs of alcohol
dependence. SA A D SD 11 – I abstain from alcohol use, or take steps to avoid the
long-term health effects of excessive alcohol use. Please answer the following questions with a number. ____ 12 – How many drinks do you consume on an average week? ____ 13 – How many drinks do you think the average UWW student consumes on an
average week? ____ 14 – What is the greatest number of drinks per week the average UWW student
could consume, while still being a healthy drinker. ____ 15 – What is the longest distance (in miles) you have driven while under the
influence of alcohol. (You believe your driving may have been impaired.) ____ 16 – In an average night of drinking, how many drinks do you consume? Please supply the following demographic information. (Circle one) Sex - Male Female Race/Ethnicity - African-American Asian Caucasian
Hispanic Native American Other: ______
Age - 18 19 20 21 22 23 24 25+ Year In School - Freshman Sophomore Junior Senior Other
APPENDIX B: ALCOHOL DISSONANCE SURVEY VIDEO ONE - __________ Please identify if you strongly agree, agree, disagree or strongly disagree to each of the following statements. SA A D SD 1 – I believe the information is accurate. SA A D SD 2 – The information presented applies to me. SA A D SD 3 – The creator of this video was credible. SA A D SD 4 – I am likely to change my behaviors because of this information. VIDEO TWO - __________ Please identify if you strongly agree, agree, disagree or strongly disagree to each of the following statements. SA A D SD 1 – I am likely to change my behaviors because of this information. SA A D SD 2 – I believe the information is accurate. SA A D SD 3 – The creator of this video was credible. SA A D SD 4 – The information presented applies to me. VIDEO THREE - __________ Please identify if you strongly agree, agree, disagree or strongly disagree to each of the following statements.. SA A D SD 1 – The creator of this video was credible. SA A D SD 2 – The information presented applies to me. SA A D SD 3 – I believe the information is accurate. SA A D SD 4 – I am likely to change my behaviors because of this information.
top related